US5776063A - Analysis of ultrasound images in the presence of contrast agent - Google Patents

Analysis of ultrasound images in the presence of contrast agent Download PDF

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US5776063A
US5776063A US08/723,898 US72389896A US5776063A US 5776063 A US5776063 A US 5776063A US 72389896 A US72389896 A US 72389896A US 5776063 A US5776063 A US 5776063A
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images
organ
computer program
interest
contrast agent
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Howard Dittrich
Harold Levene
Eric Mjolsness
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Molecular Biosystems Inc
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Molecular Biosystems Inc
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    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B8/00Diagnosis using ultrasonic, sonic or infrasonic waves
    • A61B8/06Measuring blood flow
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B8/00Diagnosis using ultrasonic, sonic or infrasonic waves
    • A61B8/48Diagnostic techniques
    • A61B8/481Diagnostic techniques involving the use of contrast agent, e.g. microbubbles introduced into the bloodstream
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B6/00Apparatus for radiation diagnosis, e.g. combined with radiation therapy equipment
    • A61B6/54Control of apparatus or devices for radiation diagnosis
    • A61B6/541Control of apparatus or devices for radiation diagnosis involving acquisition triggered by a physiological signal
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B8/00Diagnosis using ultrasonic, sonic or infrasonic waves
    • A61B8/54Control of the diagnostic device
    • A61B8/543Control of the diagnostic device involving acquisition triggered by a physiological signal

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  • This invention relates to a method and apparatus for analysis of ultrasound images of organs in the presence of contrast agent.
  • Heart disease is one of the leading causes of death in the Western world, including the United States. Heart disease is often due to coronary artery disease, resulting in myocardial infarction. If cardiac disease could be identified before a cardiac event occurs, appropriate treatment might prevent some complications of heart disease.
  • a wide variety of methods are presently available for generating data representation of the nature of anatomical and other in vivo structures and physiological processes, which make diagnosing and/or therapy easier.
  • angiography is presently used to identify and quantify occlusion and stenosis in the coronary artery.
  • echocardiography a form of ultrasound known as echocardiography has also been used extensively as a diagnostic tool for identifying cardiac problems.
  • the use of echocardiography as a diagnostic tool has the advantages of being non-invasive and relatively accurate in portraying anatomical structures.
  • Echocardiography provides large amounts of numeric or image data. The data must then be interpreted in order to classify the information. For example, an ultrasound image typically is read by a skilled technician or physician to determine whether the signs of heart disease are present in a patient, and the extent of those signs. If the patient is classified as having heart disease, knowledge of the extent of disease allows for appropriate therapy and prognostic classification.
  • contrast agents In particular, in ultrasound systems, interpretation of data can be particularly difficult.
  • image enhancement agents or “contrast” agents.
  • a contrast agent is designed to backscatter ultrasound energy, and is administered to a patient as an ultrasound image is taken.
  • Typical contrast agents comprise tiny “bubbles” filled with a fluid (liquid or gas) having desired sound reflective properties.
  • ultrasound contrast agents include, but are not limited to, liquid emulsions, solids, encapsulated fluids, encapsulated biocompatible gases and combinations thereof. Fluorinated liquids and gases are especially useful in contrast compositions.
  • the gaseous agents are of particular importance because of their efficiency as a reflector of ultrasound.
  • a contrast agent may be administered via any of the known routes, including, but are not limited to, intravenous (IV), intramuscular (IM), intraarterial (IA), and intracardiac (IC).
  • IV intravenous
  • IM intramuscular
  • IA intraarterial
  • IC intracardiac
  • a contrast agent typically perfuses in surrounding tissue at different rates depending on the health and nature of the tissue (generally, healthy tissue has more capillaries than damaged tissue, and thus contrast agent perfuses more readily through healthy tissue).
  • Backscattered ultrasound energy from the different levels of contrast agent in tissue results in a differentiated image.
  • Attenuation is a measure of the scattering, reflection, and absorption of ultrasonic energy by a particular substance whereby less of the energy passes entirely through that substance and beyond. For example, such variations in attenuation in different materials is the basis for echocardiography.
  • the ultrasound energy is significantly attenuated during transmission through a substance, the backscattering signal posterior to that substance with respect to the ultrasound transducer will be diminished, thereby causing the posterior region to appear dark, regardless of the backscatter coefficient of material in that region. This is termed "shadowing.”
  • the shadowing effect causes portions of an ultrasound image to appear dark when, in fact, contrast agent is actually present in the tissue. Significant attenuation does not allow for true visualization of the contrast agent which appears in the tissue/organs beyond the attenuating areas, and can lead to a false diagnosis.
  • FIGS. 1A and 1B An example of the attenuation effect on the posterior myocardial wall in an echocardiographic image of a heart 10 is shown in FIGS. 1A and 1B.
  • FIG. 1A is an echocardiographic image of the heart 10 before contrast agent is introduced.
  • FIG. 1B is an echocardiographic image of the heart 10 after contrast agent is introduced.
  • An ultrasound transducer 20 is located at the apex of the sector.
  • the heart muscle 10 comprises three regions of interest (ROI): anterior region 12 (i.e., closest to the transducer 20 and in front of the heart chamber 18), lateral region 14, and posterior region 16 (i.e., furthest away from transducer 20).
  • the heart chamber 18 is positioned between the posterior region 16 and the transducer 20.
  • the entire myocardium is visible, as shown in FIG. 1A.
  • the contrast agent absorbs and reflects much of the ultrasound energy, preventing it from reaching the posterior region 16.
  • the posterior region 16 appears dark in images, even though it may actually be experiencing some degree of perfusion with the contrast agent.
  • the anterior region 12 is not significantly affected.
  • the lateral regions 14 are affected to an intermediate degree, since some shadowing results from the anterior region 12. Accordingly, it has been considered that no useful information can be derived from the posterior, or "far field", region of interest (ROI) when an echocardiographic image is taken in the presence of a contrast agent, and only impaired or "noisy” information can be derived from the lateral regions 14 until the contrast agent clears sufficiently from the organ.
  • ROI region of interest
  • graphs may be generated, such as shown in FIGS. 2A-2C. These graphs represent the mean image intensity of a particular ROI as a function of time in the presence of a contrast agent.
  • FIG. 2A is a conventional time-intensity curve for heart anterior region 12, with a sonification frequency of approximately 30 frames per second (fps).
  • the curve represents frames selected from a single point in the cardiac cycle. From time at zero (i.e., the extreme left-hand side of the graph) to a maximum 24, the increasing portion of this graph is due to the wash-in of contrast agent into the anterior region 12. At the maximum 24, the anterior region 12 reaches its greatest concentration of contrast agent. From the maximum 24 until time at infinity, the gradual decreasing intensity is conventionally ascribed to wash-out of contrast agent (i.e., decreasing concentration of contrast agent as the heart pumps through blood not imbued with contrast agent) from the anterior region 12. Under this conventional interpretation, the time-intensity curve for this region of interest indicates that the anterior region 12 is normal, healthy tissue.
  • FIG. 2B depicts the lateral region 14 of the heart 10 that might be characterized by a disease condition, such as ischemia, where the blood circulation to tissue in the lateral region 14 is less than optimal. Because the blood flow is not optimal, it can be seen that the maximum 27 is lower than the maximum 24 in the anterior region 12 and that the time to reach the maximum in the lateral region 14 is greater than the time to reach the maximum in the anterior region 12.
  • the time-intensity graph in FIG. 2C exhibits the effects of significant shadowing resulting from attenuation. Assuming that posterior region 16 is as healthy as the anterior region 12, the "actual" profiles of intensity should look approximately the same if attenuation effects did not exist. Thus, if the posterior region 16 were anterior (as opposed to posterior) to the transducer 20, the dotted profile 25 would appear as the time intensity curve. However, in actuality, as the heart chamber 18 fills with contrast agent prior to perfusion in the posterior region 16, the contrast agent in the chamber 18 attenuates most of the ultrasound energy that might have penetrated and scattered off of the posterior region 16. Thus, as seen in FIG. 2C, the intensity of the posterior region 16 drops off to almost zero regardless of whether perfusion occurs in that region.
  • the effects of attenuation begin to wear off and the echo intensity in the posterior region 16 begins to increase.
  • a trained diagnostician would note that the maximum intensity in the posterior region 16 is lower than for the anterior region 12 and occurs later in time. This response is similar to the response given for the diseased lateral region 14.
  • the potential to falsely diagnose the posterior region 16 as diseased exists when in fact the problem may be due entirely to the effects of attenuation.
  • the sonification frequency affects simple time-intensity plots such as are shown in FIGS. 2A-2C.
  • FIG. 2D shows the same regions as FIG. 2A, but with a sonification frequency of about one frame per second (fps).
  • the decay rate of the curve 28 in FIG. 2D is far less than the decay rate shown in FIG. 2A.
  • the ultrasound beam contains sufficient energy to destroy or alter contrast agent "bubbles" during imaging.
  • the higher the frequency of imaging the more bubbles destroyed or altered, resulting in loss of intensity of the reflected sound. Accordingly, such simple time-intensity curves for diagnosing disease conditions are lacking as accurate diagnostic tools.
  • FIGS. 2E and 2F are views of a region of interest in a pre-contrast echocardiographic image showing a small number of bright pixels and a large number of dim pixels, and having an overall mean intensity of about 77.47.
  • FIG. 2E is a histogram of a region of interest in a pre-contrast echocardiographic image showing a small number of bright pixels and a large number of dim pixels, and having an overall mean intensity of about 77.47.
  • FIG. 2E is a histogram of a region of interest in a pre-contrast echocardiographic image showing a small number of bright pixels and a large number of dim pixels, and having an overall mean intensity of about 77.47.
  • 2F is a histogram of a region of interest in a peak contrast echocardiographic image showing a mostly medium intensity pixels, having an overall average intensity of 77.60, approximately equal to the overall average intensity of FIG. 2E.
  • the histograms visually indicate that differences exist in the two images, but generating conventional statistics can mask such differences. Accordingly, this method may fail to reliably distinguish healthy from diseased tissue in ultrasound images of organs in the presence of contrast agent, especially in mid (e.g., lateral) and far field images.
  • the present invention provides such a method and apparatus.
  • the invention is a method and apparatus for characterizing data in regions of interest of ultrasound images of organs, particularly echocardiographic images, in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities, such as ischemia.
  • the invention includes a method and apparatus for detecting and analyzing such abnormalities by means of an analysis system that preferably includes a neural network system.
  • the invention applies neural network and other analysis techniques to analyze such speckle patterns.
  • the invention is preferably applied to a time sequence of images.
  • the invention can be used to analyze ultrasound images of any organ under similar conditions. That is, any tissue or organ that receives a flow of blood may have images processed in the manner of the invention. These tissues/organs may include, but are not limited to, the kidneys, liver, brain, testes, muscles, and heart.
  • the invention can be used with any of several ultrasound imaging modalities, including conventional B-mode or gray scale ultrasound, Doppler ultrasound, 3D ultrasound, and harmonic ultrasound imaging.
  • the invention may be used with high frequency (e.g., more than about 10 fps) and low frequency (e.g., less than or equal to about 10 fps) sonification rates.
  • the invention may also be used with images taken from any orientation (e.g., short axis or long axis) or location.
  • the preferred embodiment of the present invention includes: (1) a data acquisition system for acquiring ultrasound image data indicative of a region of interest in the presence of attenuation from interposed contrast agent; (2) an optional signal conditioning stage to remove signals (e.g., noise) from the input data; and (3) an analysis system designed to detect "texture" characteristics that distinguish healthy tissue from diseased tissue even in the presence of the contrast agent.
  • the analysis system includes a neural network trained using a back-propagation algorithm. The output classifies the input data in a uniform, unambiguous manner.
  • the invention is preferably implemented as a computer program executing on a programmable computer.
  • the present invention provides a method by which attenuated ultrasound data can be directly classified without the need to display a complex and enigmatic image or other confusing output format which must be interpreted by a highly skilled technician.
  • the present invention is not limited in scope to this narrow embodiment.
  • the present invention can be applied to characterizing two-dimensional image data derived from X-rays, MRI devices, CT, PET, SPECT, and other image-generating techniques where regions of interest distinguishable by comparable "texture" characteristics are at least briefly obscured or shadowed by the presence of a contrast agent suited to each imaging modality.
  • FIG. 1A is a prior art echocardiographic image of a heart before contrast agent is introduced.
  • FIG. 1B is a prior art echocardiographic image of a heart after contrast agent is introduced.
  • FIG. 2A is a graph of the mean image intensity of a prior art echocardiographic image of the anterior region of the heart as a function of time in the presence of a contrast agent, using a sonification frequency of about 30 fps.
  • FIG. 2B is a graph of the mean image intensity of a prior art echocardiographic image of a lateral region of the heart as a function of time in the presence of a contrast agent, using a sonification frequency of about 30 fps.
  • FIG. 2C is a graph of the mean image intensity of a prior art echocardiographic image of the posterior region of the heart as a function of time in the presence of a contrast agent, using a sonification frequency of about 30 fps.
  • FIG. 2D is a graph of the mean image intensity of a prior art echocardiographic image of the anterior region of the heart as a function of time in the presence of a contrast agent, using a sonification frequency of about one fps.
  • FIG. 2E is a histogram of a region of interest in a pre-contrast prior art echocardiographic image showing a small number of bright pixels and a large number of dim and intermediate brightness pixels, and having an overall average intensity.
  • FIG. 2F is a histogram of a region of interest in a peak contrast prior art echocardiographic image showing mostly medium intensity pixels, having an overall average intensity approximately equal to the overall average intensity of FIG. 2E.
  • FIGS. 3A and 3B are stylized drawings showing conceptually how textural changes can occur yet be glossed over by prior art analysis techniques.
  • FIG. 4 is a block diagram of a simplified embodiment of the present invention used to generate and analyze regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities.
  • FIG. 5 is a diagram showing the process flow of the preferred embodiment of the present invention.
  • FIG. 6A is an echocardiographic image of a normal heart before contrast agent is introduced.
  • An inset shows a magnified region of interest of normal myocardium and "texture" in the ultrasound image.
  • FIG. 6B is an echocardiographic image of a normal heart after contrast agent is introduced.
  • An inset shows a magnified region of interest of contrast-perfused normal myocardium and the resultant "texture".
  • FIG. 7A is a pre-contrast agent echocardiographic image of a heart with a coronary artery occlusion, resulting in ischemia in the posterior region.
  • An inset shows a magnified region of interest of ischemic myocardium in the absence of contrast agent.
  • FIG. 7B is a post-contrast agent echocardiographic image of a heart with a coronary artery occlusion, resulting in ischemia in the posterior region.
  • An inset shows a magnified region of interest of the myocardium and the resultant "texture".
  • FIG. 8 is a more detailed block diagram of an embodiment of the analysis system used in the present invention to analyze regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities.
  • FIG. 9 is a block diagram of a standard multi-layer perceptron neural network trained by back-propagation of error.
  • FIG. 10 is a block diagram showing the architecture of the mixture-of-experts module in greater detail.
  • FIG. 11 is a block diagram of another way of modeling the system of FIG. 4.
  • the present invention is an analysis method and apparatus for directly identifying and characterizing input data derived from regions of interest in ultrasound images of organs in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities.
  • the input data is classified into one of a number of classes depending upon the characteristics of that data, in order to distinguish normal conditions from abnormal conditions.
  • the invention is based in part on the observation that intravenous injection of ultrasound contrast agent into an organ results in a visual change in the texture of tissue as perfusion takes place. This change is identifiable visually even when contrast agent is present between the transducer and the region of interest. It is this visually apparent change in texture which can be identified and "learned" by an analysis system such as a neural network. It is anticipated that an appropriate analysis system will be able to distinguish normally perfused, non-perfused, and highly (hyperemic) perfused segments of an organ. In addition, there is convincing preliminary data from animal studies that the contrast agent effect in tissue supplied by a moderate arterial stenosis is diminished and a visual change in texture from baseline or non-perfused tissue can be detected.
  • time-intensity curves and means of histograms generally do not reflect this texture change.
  • Mean pixel intensity may in fact decrease, as the examples in FIGS. 2C, 2E, and 2F demonstrate, at a time when a perceptible contrast effect exists in the tissue.
  • FIGS. 3A and 3B are stylized drawings showing conceptually how such textural changes can occur yet be glossed over by prior art analysis techniques.
  • a region of interest I 1 has 4 pixels P 1 , P 2 , P 3 , P 4 , each having the same intensity (e.g., 2). The average intensity over the region of interest is thus 2.
  • the visual appearance of region of interest I 1 will be quite uniform.
  • a region of interest I 2 has 4 pixels P 1 ', P 2 ', P 3 ', P 4 '. Pixels P 2 ', P 3 ', P 4 ' each have the same lower intensity (e.g., 1), while pixel P 1 ' has a much higher intensity (e.g., 5). The average intensity over the region of interest is thus still 2. However, the visual appearance of region of interest I 2 will not be as uniform as the visual appearance of region of interest I 1 . Thus, a neural network can be trained to distinguish the two regions of interest.
  • the invention will be described in the context of conventional B-mode ultrasound as presently used in echocardiography. However, it should be understood that the invention can be used to analyze ultrasound images of other organs under similar conditions.
  • the invention can be used with any of several other ultrasound imaging modalities, including Doppler ultrasound, three-dimensional ultrasound, and harmonic ultrasound imaging.
  • the invention may be used with high frequency (e.g., more than about 10 fps) and low frequency (e.g., less than or equal to about 10 fps) sonification rates.
  • the invention may also be used with images taken from any orientation (e.g., short axis or long axis) or location (e.g., parasternal or apical).
  • FIG. 4 is a block diagram of a simplified embodiment of the present invention used to generate and analyze regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities.
  • a transducer 20 is coupled to a conventional echocardiographic image acquisition system 30.
  • the output of the transducer 20 is gated so that images of the heart of a patient 35 are captured at corresponding points in time during the cardiac cycle.
  • Electrocardiographic (ECG) data can be used to perform such gating, in known fashion.
  • the echocardiographic image acquisition system 30 may provide analog images that are captured to video tape and later digitized, or provide a direct digital output. In any event, in the preferred embodiment, the echocardiographic image acquisition system 30 preferably provides a time series of digital images of selected regions of the heart of the patient 35 as output for further analysis.
  • the time sequence of images includes images of myocardial tissue before, during, and after administration of a contrast agent.
  • the output of the echocardiographic image acquisition system 30 is coupled to an analysis system 40, which is configured and operated as described below.
  • the output of the analysis system 40 can be printed or displayed in any desired fashion, and can be a simple indication of probable diagnosis or as elaborate a textual and/or graphical report as desired.
  • FIG. 5 is a diagram showing the process flow of the preferred embodiment of the present invention.
  • images are acquired by an echocardiographic image acquisition system 30 (Step 50).
  • a portion or region of interest in such images is indicated, either manually or automatically (Step 52).
  • Digitized pixel data representing such images is then transferred to an analysis system 40 (Step 54). Such transfer may be made by direct transmission or via media transference.
  • the analysis system 40 is configured to analyze backscatter speckle patterns in the images that have texture characteristics that distinguish healthy from diseased tissue. Accordingly, the analysis system 40 analyzes the texture pattern of the selected myocardial regions of interest that have been shadowed by contrast agent (Step 56). A probable diagnosis (which can include a diagnosis of insufficient data) is then indicated (Step 58).
  • the analysis system 40 may be implemented in hardware or software, or a combination of both. However, preferably, the analysis system 40 is implemented in computer programs executing on programmable computers each comprising a processor, a data storage system (including volatile and non-volatile memory and/or storage elements), at least one input device, and at least one output device. Program code is applied to input data to perform the functions described herein and generate output information. The output information is applied to one or more output devices, in known fashion.
  • Each program is preferably implemented in a high level procedural or object oriented programming language to communicate with a computer system.
  • the programs can be implemented in assembly or machine language, if desired.
  • the language may be a compiled or interpreted language.
  • Each such computer program is preferably stored on a storage media or device (e.g. ROM or magnetic diskette) readable by a general or special purpose programmable computer, for configuring and operating the computer when the storage media or device is read by the computer to perform the procedures described herein.
  • a storage media or device e.g. ROM or magnetic diskette
  • the inventive system may also be considered to be implemented as a computer-readable storage medium, configured with a computer program, where the storage medium so configured causes a computer to operate in a specific and predefined manner to perform the functions described herein.
  • contrast agents that may be used with the invention include, but are not limited to, liquid emulsions, solids, encapsulated fluids, encapsulated biocompatible gases and combinations thereof. Fluorinated liquids and gases are especially useful in contrast compositions. These types of agents include free bubbles of gas as well as those which are encapsulated by a shell material.
  • a contrast agent may be administered via any of the known routes, including, but are not limited to, intravenous (IV), intramuscular (IM), intraarterial (IA), and intracardiac (IC).
  • FIG. 6A is an echocardiographic image of a normal heart before contrast agent is introduced.
  • the transducer 20 is positioned at the top of the image.
  • An inset shows a magnified region of interest of normal myocardium and "texture" in the ultrasound image. There are bright features marking the epicardium and endocardium, caused by enhanced scattering at these tissue interfaces. Between these two structures, the appearance of the muscle (myocardium) is dark, but contains a high degree of speckling, as shown in the inset. Speckle is a well known phenomenon in ultrasound imaging and results from interference patterns from echos returning to the transducer 20 at the same time scattered off of small, closely spaced targets.
  • FIG. 6B is an echocardiographic image of a normal heart after contrast agent is introduced. Note that the central region of the organ appears very bright, due to the presence of a large amount of contrast agent in the cardiac cavity.
  • An inset shows a magnified region of interest (corresponding to the same general region of interest as in the inset of FIG. 6A) of contrast-perfused normal myocardium and the resultant "texture". The appearance of the myocardium in the presence of contrast is different when compared to FIG. 6A.
  • the speckle pattern differs in the presence of contrast because of the presence of a multitude of additional closely spaced, highly reflective targets (contrast agent microspheres), and because these targets are moving, as the microspheres flow with the blood.
  • the image shown in the inset shows this difference in degree of speckle as a visually-apparent texture that is somewhat "muted” (i.e., more homogenous and lower intensity) compared to the pre-contrast image.
  • FIG. 7A is a pre-contrast agent echocardiographic image of a heart with a coronary artery occlusion, resulting in ischemia in the posterior region.
  • An inset shows a magnified region of interest (corresponding to the same general region of interest as in the inset of FIG. 6A) of ischemic myocardium in the absence of contrast agent.
  • the appearance of the myocardium is dark, but still contains a fair degree of speckling, as shown in the inset.
  • the degree of speckling is less than in FIG. 6A because of the damaged tissue.
  • FIG. 7B is a post-contrast agent echocardiographic image of a heart with a coronary artery occlusion, resulting in ischemia in the posterior region.
  • An inset shows a magnified region of interest (corresponding to the same general region of interest as in the inset of FIG. 6A) of the myocardium and the resultant "texture". Note again that the central region of the organ appears very bright, due to the presence of a large amount of contrast agent in the cardiac cavity. The appearance of the myocardium in the presence of contrast is different when compared to FIG. 7A.
  • the image shown in the inset shows this difference in degree of speckle as a visually-apparent texture that is quite "muted” (i.e., more homogenous and lower intensity) compared to the pre-contrast image.
  • the post-contrast image of damaged tissue in FIG. 7B is visually distinct from the post-contrast image of healthy tissue in FIG. 6B.
  • FIG. 8 is a more detailed block diagram of an embodiment of the analysis system 40 used in the present invention to analyze regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities.
  • the analysis system shown in FIG. 8 should be taken as exemplary only, since alternative analysis systems could be configured to test image data for the texture characteristics that the inventors have discovered distinguish healthy tissue from damaged tissue.
  • a series of echocardiographic images and electrocardiogram data comprising the input data 60 from an echocardiographic image acquisition system are coupled to a cardiac cycle phase selection module 62.
  • the echocardiographic data is used to select from a video stream the particular images corresponding to the end-systole and end-diastole phases of each cardiac cycle, in known fashion. Only these images are passed on for further processing.
  • the output of the cardiac cycle phase selection module 62 is coupled to several image processing modules, including a texture pyramid image module 64, a baseline-subtracted image module 66, and a signal-to-noise ratio (SNR) image module 68, which generate intermediate images.
  • SNR signal-to-noise ratio
  • a user designates a region of interest (ROI) 70, using, for example, a light pen on a video monitor displaying the input data 60.
  • the sequence of images from the image analysis modules 66-68 are clipped to the region of interest (ROI) and aggregated (e.g, by averaging within the ROI) in ROI selection and aggregation modules, and then passed to a mixture-of-experts module 74 for classification, then displayed to a user 76.
  • a training module 78 configures the mixture-of-experts module 74 to select desired images based on known "good” (normal) and known "bad” (abnormal) images.
  • the sequence of selected images is applied to the texture pyramid image module 64, which applies, in the preferred embodiment, a set of oriented Gabor or wavelet filter kernels at multiple spatial scales. See, e.g., Burt, P. J.; Adelson, E. H., "The Laplacian pyramid as a compact image code", IEEE Transactions on Communications, April 1983, vol. COM-31 (no. 4):532-40. Sum-of-square energy measurements and other texture measurements can be derived from such a pyramid images by aggregation in later processing.
  • the baseline-subtracted image module 66 generates a baseline image from unperfused images, including mean brightness and standard deviation, calculated as in the QUAMP algorithm (described below).
  • the baseline image is then subtracted from each image in a sequence from the cardiac cycle phase selection module 62 to produce a series of baseline-subtracted images.
  • This series of images is coupled to the SNR image module 68, which scales each image independently for each pixel by its baseline standard deviation, to produce a series of SNR images.
  • the mixture-of-experts module 74 preferably contains a plurality of neural networks.
  • Neural networks can be used to identify features in images and recognize patterns and signatures in data streams. Neural networks differ from other signal processing algorithms in that they do not assume any fixed underlying model. Rather, neural networks "learn" to detect patterns by generating a model in response to input test data having known patterns, features, or other characteristics of interest in classifying the input data. Neural networks can be trained relatively easy and repeatably. Because neural networks learn to detect patterns, such neural networks are very flexible and adaptable to a wide variety of situations and conditions. This flexibility and adaptability gives neural networks a significant advantage over other data classification techniques. For further information on the architecture and training of MLP adaptive neural networks, see "Progress in Supervised Neural Networks" by Don Hush and Bill Horne, published in IEEE Signal Processing (January 1993).
  • FIG. 9 is a block diagram of one such neural network. Shown is a standard multilayer perceptron (MLP) network trained by back-propagation (BP) of error.
  • the MLP includes input layer comprising a plurality of input units 80, a hidden layer comprising a plurality of hidden units 82, and an output layer comprising a plurality of output units 84.
  • Each unit 82-84 is a processing element or "neuron", coupled by connections having adjustable numeric weights or connection strengths by which earlier layers influence later ones to determine the network output.
  • FIG. 10 is a block diagram showing the architecture of the mixture-of-experts module 74 in greater detail.
  • the architecture is conventional, comprising at least one adaptive neural network MLP expert module 90.
  • Multiple expert modules 90 allow for greater subdivision of the mixture-of-experts' input pattern space into qualitatively different regions while maintaining trainability.
  • the mixture-of-experts module 74 includes a nonadaptive processing expert module 92 implementing the QUAMP algorithm (described below).
  • Each expert 90, 92 has at least two outputs which indicate whether or not the input pattern falls within corresponding categories, each representing a percentage of perfusion of contrast agent within the organ.
  • a gating network module 94 is also implemented as an adaptive neural network MLP expert.
  • the output of the gating network module 94 is coupled to programable "soft" multiplexors 96 and is used to modulate the outputs of each expert 90, 92. That is, after training, the gating network module 94 decides which expert 90, 92 applies to each input image, and selects that expert via a multiplexor 96. The selected output is coupled through a logical OR gate 98 to be displayed to a user 76. The output of the mixture-of-experts module 74 classifies the input data 60 into probable diagnoses. It should be understood that the selection mechanism (multiplexors 96 and OR gate 98) is itself part of the analysis system, and is configured during training of the system in conventional fashion.
  • Variations of the system shown in FIGS. 8-10 include:
  • An ROI designation system 70 that tracks ROI automatically, such as by an algorithm or neural network which finds correspondences among point features (after initial selection by a user).
  • a feature-detecting image processing module to derive an image by trainable local filters (e.g., an adaptive neural network) receiving input from the other image modules 64-68.
  • This fourth module generates an image calculated locally by an MLP feature-detecting network, which is replicated over the image and trained using back-propagation (BP) with "weight-sharing" between different copies of the network at different locations in the image.
  • BP back-propagation
  • the output of the analysis system 40 indicates into which of N classes the input falls (N is an arbitrary partitioning).
  • N is an arbitrary partitioning.
  • a diagnostician is not required to (but may) make any judgements in the analysis of the data.
  • the present invention can be used accurately by most clinicians (e.g., cardiologists and general practitioners). The present invention thus may be used for screening asymptomatic patients.
  • the present invention is ideal for use in diagnosing cardiac disease before a person suffers a cardiac event such as myocardial infarction.
  • FIG. 11 is a block diagram of another way of modeling the system of FIG. 4.
  • Input images from the echocardiographic image acquisition system 100 are presented to an optional signal conditioning unit 102.
  • the signal conditioning unit 102 provides a first level of filtering and signal processing.
  • Signal conditioning is designed to remove signals (e.g., noise) that are not of interest to the problem at hand and to enhance those signals that are of interest.
  • the signal conditioning unit 102 may filter out 60 Hz power line hum using by applying a software digital filter to the digital input data.
  • the signal conditioning unit 102 may also perform in software or by means of electronic circuitry such functions as automatic gain control (AGC), frequency domain smoothing, time domain adaptive/predictive filtering, and/or non-linear filtering, such as singular value decomposition, non-linear transforms, homomorphic filtering, deconvolution, and dynamic time warping.
  • AGC automatic gain control
  • frequency domain smoothing e.g., frequency domain smoothing
  • time domain adaptive/predictive filtering e.g., time domain adaptive/predictive filtering
  • non-linear filtering such as singular value decomposition, non-linear transforms, homomorphic filtering, deconvolution, and dynamic time warping.
  • the feature extraction/input retina system 104 produces vectors (characteristic patterns) of features from the input data.
  • the feature extraction/input retina system 104 performs one or more feature extraction algorithms, such as: detection of simple features, short-time fast Fourier transform, high-resolution spectra, stationary linear models, non-stationary models, non-linear transforms, vector quantization, eigenvectors/values, high-order cumulants/bispectra/trispectra, instantaneous time/frequency distributions, cepstrum, Gabor transform, and/or wavelets.
  • the output of the feature extraction/input retina system 104 is one or more "feature space" representations of the original input signal, each feature space representation being associated with a corresponding one of the feature extraction algorithms applied to the original input signal.
  • Each feature space representation of the input signal is then applied to a neural network system 106.
  • the neural network system 106 has several outputs, each of which correspond to one of the N defined classifications (e.g., percent ischemia or stenosis).
  • a first category includes less than 20% coronary artery stenosis (normal)
  • a second category includes 20-40% coronary artery stenosis
  • a third category includes 41-60% coronary artery stenosis
  • a fourth category includes greater than 60% coronary artery stenosis.
  • an extra "insufficient data" output is reserved for situations in which the input contains no known signal of interest.
  • a trainer 108 Prior to using the present invention to classify actual input data, a trainer 108 is used to adjust the parameters of the neural network system 106.
  • Pre-characterized training data is applied to the neural network system 106. That is, the training data is selected such that particular known features are present.
  • such data comprise time sequences (before, during, and after administration of contrast agent) of ultrasound images that include regions of interest, where the regions of interest in the various images include known normal or abnormal myocardial tissue, and where the two types of images can be distinguished by backscatter speckle texture.
  • the trainer 108 monitors the neural network system's output and adjusts the parameters of the neural network system 106 until the desired level of performance is achieved, in known fashion. Once an acceptable level of performance is achieved, the neural network system parameters are accepted and training stops. In the preferred embodiment of the present invention, training is done in accordance with the well-known back-propagation algorithm. This algorithm is described in an article entitled “Back-Propagation, weight elimination and time series prediction” by A. S. Weigend, D. E. Rumelhart, and B. A. Huberman, published in Proceedings Of The 1990 Connectionist Models Summer School, pp. 65-80 (1990), and in an article entitled “Progress in Supervised Neural Networks” by Don Hush and Bill Horne, published in IEEE Signal Processing (January 1993). If desired, a cross-validation system may be included, in known fashion.
  • the following describes a non-trained algorithm that provides a measure of myocardial perfusion found useful in predicting the existence of "texture" in echocardiograms taken in the presence of contrast agent. The description is of an actual experiment.
  • This algorithm is implemented in the present embodiment by means of the cardiac cycle phase selection module 62, the baseline-subtracted image module 66, the signal-to-noise ratio (SNR) image module 68, and the nonadaptive processing expert module 92.
  • SNR signal-to-noise ratio
  • a rectangular region of interest (ROI) was demarcated for each myocardial segment within a sequence of images from a patient.
  • the region of interest was located to include tissue from the subepicardium to the subendocardium.
  • two different ultrasound scanners were used, which had slightly different image formats.
  • images were formed from different depths of ultrasonic penetration, either 10 cm or 12 cm.
  • the analysis method used was designed to require less operator intervention and be more independent of the scanner gain settings. For these reasons, the analysis used the following algorithm:
  • Video intensity vs. time was evaluated for each pixel within the ROI.
  • the mean of the pixel intensity over the baseline frames was calculated.
  • the estimated baseline pixel intensity for frames during which contrast appeared was taken as the mean.
  • the noise in the baseline, ⁇ base was taken as the standard deviation of the pixel intensity over the baseline frames.
  • the estimated baseline pixel intensity was subtracted from the observed pixel intensity, so that the signal solely from contrast, S i , is determined.
  • the observed pixel intensity may have decreased to an extent to be less than the estimated baseline intensity. In such instances, S i , was taken to be zero.
  • a composite signal to noise ratio was determined from the signal, S k , and the signal from the following cardiac cycle, S k+I .
  • a peak signal may arise from spurious noise, so the signals were weighted as follows: ##EQU1##
  • the signal-to-noise ratio was treated as a standardized, normal variable and the probability density of obtaining the observed S/N from random noise fluctuations was calculated as follows: ##EQU2## A pixel that had a large increase in the video intensity over the course of the injection of contrast agent compared to the baseline noise will have a large signal-to-noise ratio and a small probability of that signal-to-noise ratio deriving from noise alone.
  • a receiver operating curve (ROC) analysis determined the thresholds for perfusion by maximizing the area under the ROC curve.
  • a pixel was considered to have brightened if the probability density was less than 0.28, corresponding to S/N ⁇ 0.84.
  • a region was considered to have been perfused if 40% of the pixels in the region had brightened.
  • the area under the ROC curve was 0.84.
  • QUAMP algorithm is one expert system that may be applied in the mixture-of-experts module 74
  • other algorithms may be used as well that provide measurements of texture.
  • Such algorithms may, for example, measure texture in the presence of contrast agent using such techniques as the Gabor transform; fractal dimension (Veenland, et al., Med. Phys., 23 585 (1996)); moments of the histogram distribution (e.g., standard deviation, skewness, kurtosis); spatial gray level dependence matrix (co-occurrence matrix) (Chan, et al., Phys. Med.
  • any other information obtained from an echocardiogram may be analyzed for use as an expert system (e.g., wall thickening and wall motion).
  • the preferred embodiment of the present invention includes: (1) a data acquisition system for acquiring ultrasound image data indicative of a region of interest in the presence of attenuation from interposed contrast agent; (2) an optional signal conditioning stage to remove signals (e.g., noise) from the input data; and (3) an analysis system designed to detect "texture" characteristics that distinguish healthy tissue from diseased tissue even in the presence of the contrast agent.
  • a data acquisition system for acquiring ultrasound image data indicative of a region of interest in the presence of attenuation from interposed contrast agent
  • an optional signal conditioning stage to remove signals (e.g., noise) from the input data
  • an analysis system designed to detect "texture" characteristics that distinguish healthy tissue from diseased tissue even in the presence of the contrast agent. Since the invention can be implemented using relatively inexpensive equipment, the invention provides an inexpensive method and apparatus for accurately and consistently analyzing complex input data representing varied anatomical conditions in which the characteristics are very complex, enigmatic, or are hidden among or overwhelmed by competing noise and other signals which obscure the characteristics of interest.
  • the present invention can be applied to characterizing two-dimensional image data derived from X-rays, MRI devices, CT, PET, and other image-generating techniques where regions of interest are obscured by the presence of a contrast agent until the contrast agent clears sufficiently from the organ.
  • the imaging sonification frequency may be alternated between relatively high frequency (e.g., more than 10 fps) and relatively low frequency (e.g., less than or equal to about 10 fps) in order to provide "real-time" views versus intermittent but higher "contrast” (due to better signal-to-noise ratio) views.
  • the region of interest may be selected before generation of intermediate images. Accordingly, it is to be understood that the invention is not to be limited by the specific illustrated embodiment, but only by the scope of the appended claims.

Abstract

A method and apparatus for directly identifying and characterizing input data derived from regions of interest in ultrasound images of organs in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities. The input data is classified into one of a number of classes depending upon the characteristics of that data, in order to distinguish normal conditions from abnormal conditions. The invention is based on the recognition that significant information relating to the health of tissue exists in regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent. This information is in the form of backscatter speckle patterns that have "texture" characteristics that are distinguishable in healthy versus diseased tissue. The invention classifies such patterns as probably normal or abnormal by means of an analysis system that may include a neural network system. The preferred embodiment of the present invention includes: (1) a data acquisition system for acquiring ultrasound image data indicative of a region of interest in the presence of attenuation from interposed contrast agent; (2) an optional signal conditioning stage to remove signals (e.g., noise) from the input data; and (3) an analysis system designed to detect "texture" characteristics that distinguish healthy tissue from diseased tissue even in the presence of the contrast agent. The output classifies the input data in a uniform, unambiguous manner. The invention is preferably implemented as a computer program executing on a programmable computer.

Description

BACKGROUND OF THE INVENTION
1. Field of the Invention
This invention relates to a method and apparatus for analysis of ultrasound images of organs in the presence of contrast agent.
2. Description of Related Art
In the medical arts, there is a continuing need to determine the nature of internal anatomical or other in vivo structures and physiological processes of patients for purposes of diagnosis, therapy, and prognosis. Analysis, detection, and classification of both steady-state signals representative of anatomical and other in vivo structures and transient signals representative of ongoing processes are important in a number of medical applications.
One such application is the detection of cardiac abnormalities. Heart disease is one of the leading causes of death in the Western world, including the United States. Heart disease is often due to coronary artery disease, resulting in myocardial infarction. If cardiac disease could be identified before a cardiac event occurs, appropriate treatment might prevent some complications of heart disease.
A wide variety of methods are presently available for generating data representation of the nature of anatomical and other in vivo structures and physiological processes, which make diagnosing and/or therapy easier. For example, angiography is presently used to identify and quantify occlusion and stenosis in the coronary artery. In recent years, a form of ultrasound known as echocardiography has also been used extensively as a diagnostic tool for identifying cardiac problems. The use of echocardiography as a diagnostic tool has the advantages of being non-invasive and relatively accurate in portraying anatomical structures.
Echocardiography provides large amounts of numeric or image data. The data must then be interpreted in order to classify the information. For example, an ultrasound image typically is read by a skilled technician or physician to determine whether the signs of heart disease are present in a patient, and the extent of those signs. If the patient is classified as having heart disease, knowledge of the extent of disease allows for appropriate therapy and prognostic classification.
Presently, in many applications data is presented in a visual format which requires a highly skilled technologist to detect significant "signature" characteristics in the data which in turn reveal traits of an anatomical or other in vivo structure or physiological process. Such data is commonly displayed on a printed chart, photographic film, or video display monitor, such as a cathode ray tube (CRT) or liquid crystal display (LCD). However, data from any particular system is often difficult to interpret because of limitations of the data collection system and the presence of unwanted signals ("noise").
In particular, in ultrasound systems, interpretation of data can be particularly difficult. In order to improve image quality, image enhancement agents, or "contrast" agents, have been developed. A contrast agent is designed to backscatter ultrasound energy, and is administered to a patient as an ultrasound image is taken. Typical contrast agents comprise tiny "bubbles" filled with a fluid (liquid or gas) having desired sound reflective properties. However, ultrasound contrast agents include, but are not limited to, liquid emulsions, solids, encapsulated fluids, encapsulated biocompatible gases and combinations thereof. Fluorinated liquids and gases are especially useful in contrast compositions. The gaseous agents are of particular importance because of their efficiency as a reflector of ultrasound. Resonant gas bubbles scatter sound a thousand times more efficiently than a solid particle of the same size. These types of agents include free bubbles of gas as well as those which are encapsulated by a shell material. A contrast agent may be administered via any of the known routes, including, but are not limited to, intravenous (IV), intramuscular (IM), intraarterial (IA), and intracardiac (IC).
A contrast agent typically perfuses in surrounding tissue at different rates depending on the health and nature of the tissue (generally, healthy tissue has more capillaries than damaged tissue, and thus contrast agent perfuses more readily through healthy tissue). Backscattered ultrasound energy from the different levels of contrast agent in tissue results in a differentiated image. By analyzing one or more ultrasound images, a skilled technologist can determine a diagnosis.
Even with contrast agents, ultrasound images are particularly difficult to interpret because of uneven attenuation. "Attenuation" is a measure of the scattering, reflection, and absorption of ultrasonic energy by a particular substance whereby less of the energy passes entirely through that substance and beyond. For example, such variations in attenuation in different materials is the basis for echocardiography. However, if the ultrasound energy is significantly attenuated during transmission through a substance, the backscattering signal posterior to that substance with respect to the ultrasound transducer will be diminished, thereby causing the posterior region to appear dark, regardless of the backscatter coefficient of material in that region. This is termed "shadowing." The shadowing effect causes portions of an ultrasound image to appear dark when, in fact, contrast agent is actually present in the tissue. Significant attenuation does not allow for true visualization of the contrast agent which appears in the tissue/organs beyond the attenuating areas, and can lead to a false diagnosis.
An example of the attenuation effect on the posterior myocardial wall in an echocardiographic image of a heart 10 is shown in FIGS. 1A and 1B. FIG. 1A is an echocardiographic image of the heart 10 before contrast agent is introduced. FIG. 1B is an echocardiographic image of the heart 10 after contrast agent is introduced. An ultrasound transducer 20 is located at the apex of the sector. The heart muscle 10 comprises three regions of interest (ROI): anterior region 12 (i.e., closest to the transducer 20 and in front of the heart chamber 18), lateral region 14, and posterior region 16 (i.e., furthest away from transducer 20). The heart chamber 18 is positioned between the posterior region 16 and the transducer 20. Before introduction of a contrast agent, the entire myocardium is visible, as shown in FIG. 1A.
However, with the introduction of a contrast agent into the heart chamber 18 in FIG. 1B, the contrast agent absorbs and reflects much of the ultrasound energy, preventing it from reaching the posterior region 16. The posterior region 16 appears dark in images, even though it may actually be experiencing some degree of perfusion with the contrast agent. The anterior region 12 is not significantly affected. The lateral regions 14 are affected to an intermediate degree, since some shadowing results from the anterior region 12. Accordingly, it has been considered that no useful information can be derived from the posterior, or "far field", region of interest (ROI) when an echocardiographic image is taken in the presence of a contrast agent, and only impaired or "noisy" information can be derived from the lateral regions 14 until the contrast agent clears sufficiently from the organ.
From the detected wave reflections, graphs may be generated, such as shown in FIGS. 2A-2C. These graphs represent the mean image intensity of a particular ROI as a function of time in the presence of a contrast agent.
FIG. 2A is a conventional time-intensity curve for heart anterior region 12, with a sonification frequency of approximately 30 frames per second (fps). The curve represents frames selected from a single point in the cardiac cycle. From time at zero (i.e., the extreme left-hand side of the graph) to a maximum 24, the increasing portion of this graph is due to the wash-in of contrast agent into the anterior region 12. At the maximum 24, the anterior region 12 reaches its greatest concentration of contrast agent. From the maximum 24 until time at infinity, the gradual decreasing intensity is conventionally ascribed to wash-out of contrast agent (i.e., decreasing concentration of contrast agent as the heart pumps through blood not imbued with contrast agent) from the anterior region 12. Under this conventional interpretation, the time-intensity curve for this region of interest indicates that the anterior region 12 is normal, healthy tissue.
FIG. 2B depicts the lateral region 14 of the heart 10 that might be characterized by a disease condition, such as ischemia, where the blood circulation to tissue in the lateral region 14 is less than optimal. Because the blood flow is not optimal, it can be seen that the maximum 27 is lower than the maximum 24 in the anterior region 12 and that the time to reach the maximum in the lateral region 14 is greater than the time to reach the maximum in the anterior region 12. The lateral region 14, known to be only somewhat affected by attenuation, shows a delay in both the time and intensity of the contrast agent. The conventional interpretation of this graph indicates an abnormality in that ROI.
The time-intensity graph in FIG. 2C exhibits the effects of significant shadowing resulting from attenuation. Assuming that posterior region 16 is as healthy as the anterior region 12, the "actual" profiles of intensity should look approximately the same if attenuation effects did not exist. Thus, if the posterior region 16 were anterior (as opposed to posterior) to the transducer 20, the dotted profile 25 would appear as the time intensity curve. However, in actuality, as the heart chamber 18 fills with contrast agent prior to perfusion in the posterior region 16, the contrast agent in the chamber 18 attenuates most of the ultrasound energy that might have penetrated and scattered off of the posterior region 16. Thus, as seen in FIG. 2C, the intensity of the posterior region 16 drops off to almost zero regardless of whether perfusion occurs in that region.
At some time after the heart chamber 18 reaches its maximum concentration of contrast agent, the effects of attenuation begin to wear off and the echo intensity in the posterior region 16 begins to increase. However, a trained diagnostician would note that the maximum intensity in the posterior region 16 is lower than for the anterior region 12 and occurs later in time. This response is similar to the response given for the diseased lateral region 14. Thus, the potential to falsely diagnose the posterior region 16 as diseased exists when in fact the problem may be due entirely to the effects of attenuation.
Moreover, it has recently been discovered that the sonification frequency (the frequency at which ultrasound images are generated) affects simple time-intensity plots such as are shown in FIGS. 2A-2C. For example, FIG. 2D shows the same regions as FIG. 2A, but with a sonification frequency of about one frame per second (fps). The decay rate of the curve 28 in FIG. 2D is far less than the decay rate shown in FIG. 2A. It is now believed that the ultrasound beam contains sufficient energy to destroy or alter contrast agent "bubbles" during imaging. Thus, the higher the frequency of imaging, the more bubbles destroyed or altered, resulting in loss of intensity of the reflected sound. Accordingly, such simple time-intensity curves for diagnosing disease conditions are lacking as accurate diagnostic tools.
Other diagnostic tools, such as histograms of pixel intensity of ultrasound images, have been used in an attempt to detect disease in tissue. However, a histogram which displays the range of pixel intensity within a region of interest may change without a net increase in overall intensity. The distribution of intensity within a region of interest, during passage of contrast agent through the tissue, may change from a few bright and many dim pixels to a greater proportion of medium intensity pixels. Such a change is shown in FIGS. 2E and 2F. FIG. 2E is a histogram of a region of interest in a pre-contrast echocardiographic image showing a small number of bright pixels and a large number of dim pixels, and having an overall mean intensity of about 77.47. FIG. 2F is a histogram of a region of interest in a peak contrast echocardiographic image showing a mostly medium intensity pixels, having an overall average intensity of 77.60, approximately equal to the overall average intensity of FIG. 2E. The histograms visually indicate that differences exist in the two images, but generating conventional statistics can mask such differences. Accordingly, this method may fail to reliably distinguish healthy from diseased tissue in ultrasound images of organs in the presence of contrast agent, especially in mid (e.g., lateral) and far field images.
Thus, there is a need for a method and apparatus for accurately and consistently analyzing far field regions of ultrasound images of organs in the presence of attenuation from interposed contrast agent. The present invention provides such a method and apparatus.
SUMMARY OF THE INVENTION
The invention is a method and apparatus for characterizing data in regions of interest of ultrasound images of organs, particularly echocardiographic images, in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities, such as ischemia. The invention includes a method and apparatus for detecting and analyzing such abnormalities by means of an analysis system that preferably includes a neural network system.
In developing the present invention, it was recognized that significant information relating to the health of tissue in fact exists in mid field and far field regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent. This information is in the form of backscatter speckle patterns that have "texture" characteristics that are distinguishable in healthy versus diseased tissue. However, such patterns are difficult to discern and classify manually or by using simple statistical or time-intensity analysis. Accordingly, the invention applies neural network and other analysis techniques to analyze such speckle patterns. The invention is preferably applied to a time sequence of images.
The invention can be used to analyze ultrasound images of any organ under similar conditions. That is, any tissue or organ that receives a flow of blood may have images processed in the manner of the invention. These tissues/organs may include, but are not limited to, the kidneys, liver, brain, testes, muscles, and heart.
The invention can be used with any of several ultrasound imaging modalities, including conventional B-mode or gray scale ultrasound, Doppler ultrasound, 3D ultrasound, and harmonic ultrasound imaging. The invention may be used with high frequency (e.g., more than about 10 fps) and low frequency (e.g., less than or equal to about 10 fps) sonification rates. The invention may also be used with images taken from any orientation (e.g., short axis or long axis) or location.
The preferred embodiment of the present invention includes: (1) a data acquisition system for acquiring ultrasound image data indicative of a region of interest in the presence of attenuation from interposed contrast agent; (2) an optional signal conditioning stage to remove signals (e.g., noise) from the input data; and (3) an analysis system designed to detect "texture" characteristics that distinguish healthy tissue from diseased tissue even in the presence of the contrast agent. In the preferred embodiment, the analysis system includes a neural network trained using a back-propagation algorithm. The output classifies the input data in a uniform, unambiguous manner. The invention is preferably implemented as a computer program executing on a programmable computer.
The present invention provides a method by which attenuated ultrasound data can be directly classified without the need to display a complex and enigmatic image or other confusing output format which must be interpreted by a highly skilled technician.
It should be understood that the present invention is not limited in scope to this narrow embodiment. For example, the present invention can be applied to characterizing two-dimensional image data derived from X-rays, MRI devices, CT, PET, SPECT, and other image-generating techniques where regions of interest distinguishable by comparable "texture" characteristics are at least briefly obscured or shadowed by the presence of a contrast agent suited to each imaging modality.
BRIEF DESCRIPTION OF THE DRAWINGS
FIG. 1A is a prior art echocardiographic image of a heart before contrast agent is introduced.
FIG. 1B is a prior art echocardiographic image of a heart after contrast agent is introduced.
FIG. 2A is a graph of the mean image intensity of a prior art echocardiographic image of the anterior region of the heart as a function of time in the presence of a contrast agent, using a sonification frequency of about 30 fps.
FIG. 2B is a graph of the mean image intensity of a prior art echocardiographic image of a lateral region of the heart as a function of time in the presence of a contrast agent, using a sonification frequency of about 30 fps.
FIG. 2C is a graph of the mean image intensity of a prior art echocardiographic image of the posterior region of the heart as a function of time in the presence of a contrast agent, using a sonification frequency of about 30 fps.
FIG. 2D is a graph of the mean image intensity of a prior art echocardiographic image of the anterior region of the heart as a function of time in the presence of a contrast agent, using a sonification frequency of about one fps.
FIG. 2E is a histogram of a region of interest in a pre-contrast prior art echocardiographic image showing a small number of bright pixels and a large number of dim and intermediate brightness pixels, and having an overall average intensity.
FIG. 2F is a histogram of a region of interest in a peak contrast prior art echocardiographic image showing mostly medium intensity pixels, having an overall average intensity approximately equal to the overall average intensity of FIG. 2E.
FIGS. 3A and 3B are stylized drawings showing conceptually how textural changes can occur yet be glossed over by prior art analysis techniques.
FIG. 4 is a block diagram of a simplified embodiment of the present invention used to generate and analyze regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities.
FIG. 5 is a diagram showing the process flow of the preferred embodiment of the present invention.
FIG. 6A is an echocardiographic image of a normal heart before contrast agent is introduced. An inset shows a magnified region of interest of normal myocardium and "texture" in the ultrasound image.
FIG. 6B is an echocardiographic image of a normal heart after contrast agent is introduced. An inset shows a magnified region of interest of contrast-perfused normal myocardium and the resultant "texture".
FIG. 7A is a pre-contrast agent echocardiographic image of a heart with a coronary artery occlusion, resulting in ischemia in the posterior region. An inset shows a magnified region of interest of ischemic myocardium in the absence of contrast agent.
FIG. 7B is a post-contrast agent echocardiographic image of a heart with a coronary artery occlusion, resulting in ischemia in the posterior region. An inset shows a magnified region of interest of the myocardium and the resultant "texture".
FIG. 8 is a more detailed block diagram of an embodiment of the analysis system used in the present invention to analyze regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities.
FIG. 9 is a block diagram of a standard multi-layer perceptron neural network trained by back-propagation of error.
FIG. 10 is a block diagram showing the architecture of the mixture-of-experts module in greater detail.
FIG. 11 is a block diagram of another way of modeling the system of FIG. 4.
Like reference numbers and designations in the various drawings refer to like elements.
DETAILED DESCRIPTION OF THE INVENTION
Throughout this description, the preferred embodiment and examples shown should be considered as exemplars, rather than as limitations on the present invention.
Overview
The present invention is an analysis method and apparatus for directly identifying and characterizing input data derived from regions of interest in ultrasound images of organs in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities. The input data is classified into one of a number of classes depending upon the characteristics of that data, in order to distinguish normal conditions from abnormal conditions.
In developing the present invention, it was recognized that significant information relating to the health of tissue in fact exists in regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent. This information is in the form of backscatter speckle patterns that have "texture" characteristics that are distinguishable in healthy versus diseased tissue. However, such patterns are difficult to discern and classify manually. Accordingly, the invention applies specialized analysis techniques, including neural network techniques, to analyze such texture patterns.
More particularly, the invention is based in part on the observation that intravenous injection of ultrasound contrast agent into an organ results in a visual change in the texture of tissue as perfusion takes place. This change is identifiable visually even when contrast agent is present between the transducer and the region of interest. It is this visually apparent change in texture which can be identified and "learned" by an analysis system such as a neural network. It is anticipated that an appropriate analysis system will be able to distinguish normally perfused, non-perfused, and highly (hyperemic) perfused segments of an organ. In addition, there is convincing preliminary data from animal studies that the contrast agent effect in tissue supplied by a moderate arterial stenosis is diminished and a visual change in texture from baseline or non-perfused tissue can be detected.
As noted above, time-intensity curves and means of histograms generally do not reflect this texture change. Mean pixel intensity may in fact decrease, as the examples in FIGS. 2C, 2E, and 2F demonstrate, at a time when a perceptible contrast effect exists in the tissue.
FIGS. 3A and 3B are stylized drawings showing conceptually how such textural changes can occur yet be glossed over by prior art analysis techniques. In FIG. 3A, a region of interest I1 has 4 pixels P1, P2, P3, P4, each having the same intensity (e.g., 2). The average intensity over the region of interest is thus 2. The visual appearance of region of interest I1 will be quite uniform.
In FIG. 3B, a region of interest I2 has 4 pixels P1 ', P2 ', P3 ', P4 '. Pixels P2 ', P3 ', P4 ' each have the same lower intensity (e.g., 1), while pixel P1 ' has a much higher intensity (e.g., 5). The average intensity over the region of interest is thus still 2. However, the visual appearance of region of interest I2 will not be as uniform as the visual appearance of region of interest I1. Thus, a neural network can be trained to distinguish the two regions of interest.
Preferred Apparatus
The invention will be described in the context of conventional B-mode ultrasound as presently used in echocardiography. However, it should be understood that the invention can be used to analyze ultrasound images of other organs under similar conditions. The invention can be used with any of several other ultrasound imaging modalities, including Doppler ultrasound, three-dimensional ultrasound, and harmonic ultrasound imaging. The invention may be used with high frequency (e.g., more than about 10 fps) and low frequency (e.g., less than or equal to about 10 fps) sonification rates. The invention may also be used with images taken from any orientation (e.g., short axis or long axis) or location (e.g., parasternal or apical).
FIG. 4 is a block diagram of a simplified embodiment of the present invention used to generate and analyze regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities. A transducer 20 is coupled to a conventional echocardiographic image acquisition system 30. In the preferred embodiment, the output of the transducer 20 is gated so that images of the heart of a patient 35 are captured at corresponding points in time during the cardiac cycle. Electrocardiographic (ECG) data can be used to perform such gating, in known fashion.
The echocardiographic image acquisition system 30 may provide analog images that are captured to video tape and later digitized, or provide a direct digital output. In any event, in the preferred embodiment, the echocardiographic image acquisition system 30 preferably provides a time series of digital images of selected regions of the heart of the patient 35 as output for further analysis. The time sequence of images includes images of myocardial tissue before, during, and after administration of a contrast agent.
The output of the echocardiographic image acquisition system 30 is coupled to an analysis system 40, which is configured and operated as described below. The output of the analysis system 40 can be printed or displayed in any desired fashion, and can be a simple indication of probable diagnosis or as elaborate a textual and/or graphical report as desired.
FIG. 5 is a diagram showing the process flow of the preferred embodiment of the present invention. Initially, images are acquired by an echocardiographic image acquisition system 30 (Step 50). In known fashion, a portion or region of interest in such images is indicated, either manually or automatically (Step 52). Digitized pixel data representing such images is then transferred to an analysis system 40 (Step 54). Such transfer may be made by direct transmission or via media transference.
The analysis system 40 is configured to analyze backscatter speckle patterns in the images that have texture characteristics that distinguish healthy from diseased tissue. Accordingly, the analysis system 40 analyzes the texture pattern of the selected myocardial regions of interest that have been shadowed by contrast agent (Step 56). A probable diagnosis (which can include a diagnosis of insufficient data) is then indicated (Step 58).
The analysis system 40 may be implemented in hardware or software, or a combination of both. However, preferably, the analysis system 40 is implemented in computer programs executing on programmable computers each comprising a processor, a data storage system (including volatile and non-volatile memory and/or storage elements), at least one input device, and at least one output device. Program code is applied to input data to perform the functions described herein and generate output information. The output information is applied to one or more output devices, in known fashion.
Each program is preferably implemented in a high level procedural or object oriented programming language to communicate with a computer system. However, the programs can be implemented in assembly or machine language, if desired. In any case, the language may be a compiled or interpreted language.
Each such computer program is preferably stored on a storage media or device (e.g. ROM or magnetic diskette) readable by a general or special purpose programmable computer, for configuring and operating the computer when the storage media or device is read by the computer to perform the procedures described herein. The inventive system may also be considered to be implemented as a computer-readable storage medium, configured with a computer program, where the storage medium so configured causes a computer to operate in a specific and predefined manner to perform the functions described herein.
Typical contrast agents that may be used with the invention include, but are not limited to, liquid emulsions, solids, encapsulated fluids, encapsulated biocompatible gases and combinations thereof. Fluorinated liquids and gases are especially useful in contrast compositions. These types of agents include free bubbles of gas as well as those which are encapsulated by a shell material. A contrast agent may be administered via any of the known routes, including, but are not limited to, intravenous (IV), intramuscular (IM), intraarterial (IA), and intracardiac (IC).
Contrast Agent Texture Patterns
FIG. 6A is an echocardiographic image of a normal heart before contrast agent is introduced. The transducer 20 is positioned at the top of the image. An inset shows a magnified region of interest of normal myocardium and "texture" in the ultrasound image. There are bright features marking the epicardium and endocardium, caused by enhanced scattering at these tissue interfaces. Between these two structures, the appearance of the muscle (myocardium) is dark, but contains a high degree of speckling, as shown in the inset. Speckle is a well known phenomenon in ultrasound imaging and results from interference patterns from echos returning to the transducer 20 at the same time scattered off of small, closely spaced targets.
FIG. 6B is an echocardiographic image of a normal heart after contrast agent is introduced. Note that the central region of the organ appears very bright, due to the presence of a large amount of contrast agent in the cardiac cavity. An inset shows a magnified region of interest (corresponding to the same general region of interest as in the inset of FIG. 6A) of contrast-perfused normal myocardium and the resultant "texture". The appearance of the myocardium in the presence of contrast is different when compared to FIG. 6A. The speckle pattern differs in the presence of contrast because of the presence of a multitude of additional closely spaced, highly reflective targets (contrast agent microspheres), and because these targets are moving, as the microspheres flow with the blood. The image shown in the inset shows this difference in degree of speckle as a visually-apparent texture that is somewhat "muted" (i.e., more homogenous and lower intensity) compared to the pre-contrast image.
FIG. 7A is a pre-contrast agent echocardiographic image of a heart with a coronary artery occlusion, resulting in ischemia in the posterior region. An inset shows a magnified region of interest (corresponding to the same general region of interest as in the inset of FIG. 6A) of ischemic myocardium in the absence of contrast agent. As in FIG. 6A, there are bright features marking the epicardium and endocardium, caused by enhanced scattering at these tissue interfaces. Between these two structures, the appearance of the myocardium is dark, but still contains a fair degree of speckling, as shown in the inset. However, the degree of speckling is less than in FIG. 6A because of the damaged tissue.
FIG. 7B is a post-contrast agent echocardiographic image of a heart with a coronary artery occlusion, resulting in ischemia in the posterior region. An inset shows a magnified region of interest (corresponding to the same general region of interest as in the inset of FIG. 6A) of the myocardium and the resultant "texture". Note again that the central region of the organ appears very bright, due to the presence of a large amount of contrast agent in the cardiac cavity. The appearance of the myocardium in the presence of contrast is different when compared to FIG. 7A. The image shown in the inset shows this difference in degree of speckle as a visually-apparent texture that is quite "muted" (i.e., more homogenous and lower intensity) compared to the pre-contrast image. Note also the difference between the post-contrast image of damaged tissue in FIG. 7B compared to the pre-contrast image of healthy tissue in FIG. 6A. Note further that the post-contrast image of damaged tissue in FIG. 7B is visually distinct from the post-contrast image of healthy tissue in FIG. 6B.
Importantly, although little texture exists in FIG. 7B compared to FIG. 6B, the human eye can still discern some texture. Thus, information relating to the health of tissue in fact exists in regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, despite conventional belief to the contrary. The invention applies specialized analysis techniques, including neural network techniques, to analyze such texture patterns.
The Analysis System
FIG. 8 is a more detailed block diagram of an embodiment of the analysis system 40 used in the present invention to analyze regions of interest in ultrasound images in the presence of attenuation from interposed contrast agent, for the purpose of diagnosing abnormalities. The analysis system shown in FIG. 8 should be taken as exemplary only, since alternative analysis systems could be configured to test image data for the texture characteristics that the inventors have discovered distinguish healthy tissue from damaged tissue.
A series of echocardiographic images and electrocardiogram data comprising the input data 60 from an echocardiographic image acquisition system are coupled to a cardiac cycle phase selection module 62. The echocardiographic data is used to select from a video stream the particular images corresponding to the end-systole and end-diastole phases of each cardiac cycle, in known fashion. Only these images are passed on for further processing. The output of the cardiac cycle phase selection module 62 is coupled to several image processing modules, including a texture pyramid image module 64, a baseline-subtracted image module 66, and a signal-to-noise ratio (SNR) image module 68, which generate intermediate images. In the simplest embodiment, a user designates a region of interest (ROI) 70, using, for example, a light pen on a video monitor displaying the input data 60. The sequence of images from the image analysis modules 66-68 are clipped to the region of interest (ROI) and aggregated (e.g, by averaging within the ROI) in ROI selection and aggregation modules, and then passed to a mixture-of-experts module 74 for classification, then displayed to a user 76. A training module 78 configures the mixture-of-experts module 74 to select desired images based on known "good" (normal) and known "bad" (abnormal) images.
The sequence of selected images is applied to the texture pyramid image module 64, which applies, in the preferred embodiment, a set of oriented Gabor or wavelet filter kernels at multiple spatial scales. See, e.g., Burt, P. J.; Adelson, E. H., "The Laplacian pyramid as a compact image code", IEEE Transactions on Communications, April 1983, vol. COM-31 (no. 4):532-40. Sum-of-square energy measurements and other texture measurements can be derived from such a pyramid images by aggregation in later processing. The baseline-subtracted image module 66 generates a baseline image from unperfused images, including mean brightness and standard deviation, calculated as in the QUAMP algorithm (described below). The baseline image is then subtracted from each image in a sequence from the cardiac cycle phase selection module 62 to produce a series of baseline-subtracted images. This series of images is coupled to the SNR image module 68, which scales each image independently for each pixel by its baseline standard deviation, to produce a series of SNR images.
The mixture-of-experts module 74 preferably contains a plurality of neural networks. Neural networks can be used to identify features in images and recognize patterns and signatures in data streams. Neural networks differ from other signal processing algorithms in that they do not assume any fixed underlying model. Rather, neural networks "learn" to detect patterns by generating a model in response to input test data having known patterns, features, or other characteristics of interest in classifying the input data. Neural networks can be trained relatively easy and repeatably. Because neural networks learn to detect patterns, such neural networks are very flexible and adaptable to a wide variety of situations and conditions. This flexibility and adaptability gives neural networks a significant advantage over other data classification techniques. For further information on the architecture and training of MLP adaptive neural networks, see "Progress in Supervised Neural Networks" by Don Hush and Bill Horne, published in IEEE Signal Processing (January 1993).
FIG. 9 is a block diagram of one such neural network. Shown is a standard multilayer perceptron (MLP) network trained by back-propagation (BP) of error. The MLP includes input layer comprising a plurality of input units 80, a hidden layer comprising a plurality of hidden units 82, and an output layer comprising a plurality of output units 84. Each unit 82-84 is a processing element or "neuron", coupled by connections having adjustable numeric weights or connection strengths by which earlier layers influence later ones to determine the network output.
FIG. 10 is a block diagram showing the architecture of the mixture-of-experts module 74 in greater detail. The architecture is conventional, comprising at least one adaptive neural network MLP expert module 90. Multiple expert modules 90 allow for greater subdivision of the mixture-of-experts' input pattern space into qualitatively different regions while maintaining trainability. In the preferred embodiment, the mixture-of-experts module 74 includes a nonadaptive processing expert module 92 implementing the QUAMP algorithm (described below). Each expert 90, 92 has at least two outputs which indicate whether or not the input pattern falls within corresponding categories, each representing a percentage of perfusion of contrast agent within the organ. A gating network module 94 is also implemented as an adaptive neural network MLP expert. The output of the gating network module 94 is coupled to programable "soft" multiplexors 96 and is used to modulate the outputs of each expert 90, 92. That is, after training, the gating network module 94 decides which expert 90, 92 applies to each input image, and selects that expert via a multiplexor 96. The selected output is coupled through a logical OR gate 98 to be displayed to a user 76. The output of the mixture-of-experts module 74 classifies the input data 60 into probable diagnoses. It should be understood that the selection mechanism (multiplexors 96 and OR gate 98) is itself part of the analysis system, and is configured during training of the system in conventional fashion.
Variations of the system shown in FIGS. 8-10 include:
(1) An ROI designation system 70 that tracks ROI automatically, such as by an algorithm or neural network which finds correspondences among point features (after initial selection by a user).
(2) Use of a feature-detecting image processing module to derive an image by trainable local filters (e.g., an adaptive neural network) receiving input from the other image modules 64-68. This fourth module generates an image calculated locally by an MLP feature-detecting network, which is replicated over the image and trained using back-propagation (BP) with "weight-sharing" between different copies of the network at different locations in the image.
In the preferred embodiment of the present invention, the output of the analysis system 40 indicates into which of N classes the input falls (N is an arbitrary partitioning). Thus, a diagnostician is not required to (but may) make any judgements in the analysis of the data. When used to diagnose cardiac disease, the present invention can be used accurately by most clinicians (e.g., cardiologists and general practitioners). The present invention thus may be used for screening asymptomatic patients. For example, the present invention is ideal for use in diagnosing cardiac disease before a person suffers a cardiac event such as myocardial infarction.
FIG. 11 is a block diagram of another way of modeling the system of FIG. 4. Input images from the echocardiographic image acquisition system 100 are presented to an optional signal conditioning unit 102. The signal conditioning unit 102 provides a first level of filtering and signal processing. Signal conditioning is designed to remove signals (e.g., noise) that are not of interest to the problem at hand and to enhance those signals that are of interest. For example, the signal conditioning unit 102 may filter out 60 Hz power line hum using by applying a software digital filter to the digital input data. The signal conditioning unit 102 may also perform in software or by means of electronic circuitry such functions as automatic gain control (AGC), frequency domain smoothing, time domain adaptive/predictive filtering, and/or non-linear filtering, such as singular value decomposition, non-linear transforms, homomorphic filtering, deconvolution, and dynamic time warping. The output of the signal conditioning unit 102 is applied to a feature extraction/input retina system 104.
The feature extraction/input retina system 104 produces vectors (characteristic patterns) of features from the input data. The feature extraction/input retina system 104 performs one or more feature extraction algorithms, such as: detection of simple features, short-time fast Fourier transform, high-resolution spectra, stationary linear models, non-stationary models, non-linear transforms, vector quantization, eigenvectors/values, high-order cumulants/bispectra/trispectra, instantaneous time/frequency distributions, cepstrum, Gabor transform, and/or wavelets. The output of the feature extraction/input retina system 104 is one or more "feature space" representations of the original input signal, each feature space representation being associated with a corresponding one of the feature extraction algorithms applied to the original input signal.
Each feature space representation of the input signal is then applied to a neural network system 106. In the illustrated embodiment, the neural network system 106 has several outputs, each of which correspond to one of the N defined classifications (e.g., percent ischemia or stenosis). For example, in the preferred embodiment of the present invention, a first category includes less than 20% coronary artery stenosis (normal), a second category includes 20-40% coronary artery stenosis, a third category includes 41-60% coronary artery stenosis, and a fourth category includes greater than 60% coronary artery stenosis. In the preferred embodiment of the present invention, an extra "insufficient data" output is reserved for situations in which the input contains no known signal of interest.
Prior to using the present invention to classify actual input data, a trainer 108 is used to adjust the parameters of the neural network system 106. Pre-characterized training data is applied to the neural network system 106. That is, the training data is selected such that particular known features are present. In the present invention, such data comprise time sequences (before, during, and after administration of contrast agent) of ultrasound images that include regions of interest, where the regions of interest in the various images include known normal or abnormal myocardial tissue, and where the two types of images can be distinguished by backscatter speckle texture.
The trainer 108 monitors the neural network system's output and adjusts the parameters of the neural network system 106 until the desired level of performance is achieved, in known fashion. Once an acceptable level of performance is achieved, the neural network system parameters are accepted and training stops. In the preferred embodiment of the present invention, training is done in accordance with the well-known back-propagation algorithm. This algorithm is described in an article entitled "Back-Propagation, weight elimination and time series prediction" by A. S. Weigend, D. E. Rumelhart, and B. A. Huberman, published in Proceedings Of The 1990 Connectionist Models Summer School, pp. 65-80 (1990), and in an article entitled "Progress in Supervised Neural Networks" by Don Hush and Bill Horne, published in IEEE Signal Processing (January 1993). If desired, a cross-validation system may be included, in known fashion.
Qualitative Assessment of Myocardial Perfusion--QUAMP
The following describes a non-trained algorithm that provides a measure of myocardial perfusion found useful in predicting the existence of "texture" in echocardiograms taken in the presence of contrast agent. The description is of an actual experiment. This algorithm is implemented in the present embodiment by means of the cardiac cycle phase selection module 62, the baseline-subtracted image module 66, the signal-to-noise ratio (SNR) image module 68, and the nonadaptive processing expert module 92.
Copies of echocardiogram images were made from original videotapes; although this introduces some noise, this allows the closest comparison to the quality of the images viewed by the echocardiographers. While the copied video tape was played on a video cassette recorder, the images were transferred to a laser videodisc recorder. Images at the same point in the cardiac cycle were then manually chosen, based on an ECG trace recorded on the videotape, for transfer from the videodisc recorder to a computer via a frame capture board. The images were digitized with a spatial resolution of 660×485 pixels per frame and a brightness resolution of 8 bits (256 grey levels). Myocardial perfusion assessments were made separately from images at end systole and end diastole.
A rectangular region of interest (ROI) was demarcated for each myocardial segment within a sequence of images from a patient. The region of interest was located to include tissue from the subepicardium to the subendocardium. For seven patients, two different ultrasound scanners were used, which had slightly different image formats. In addition, for the different patients, images were formed from different depths of ultrasonic penetration, either 10 cm or 12 cm. These factors, together with the fact that the six myocardial segments with a single view or between views were different sizes, meant that the sizes of the ROI varied from patient to patient and segment to segment. Any correction for motion between frames was made manually, i.e., the operator adjusted the placement of the region of interest for each frame as necessary.
The analysis method used was designed to require less operator intervention and be more independent of the scanner gain settings. For these reasons, the analysis used the following algorithm:
Frames in which contrast does not visually appear were designated as baseline frames.
Video intensity vs. time was evaluated for each pixel within the ROI.
For image sequences that contained 10 or more baseline frames, a simple non-weighted, linear regression was performed on the pixel intensity vs. time plot for the baseline frames. In addition to the slope and intercept, the rms error of the fit, σbase, was determined. From this fit, the baseline pixel intensity was estimated for frames during which contrast appeared. If the estimated baseline pixel intensity was negative, resulting from a negative slope, then the baseline pixel intensity was taken to be zero.
For image sequences containing fewer than 10 baseline frames, the mean of the pixel intensity over the baseline frames was calculated. The estimated baseline pixel intensity for frames during which contrast appeared was taken as the mean.
The noise in the baseline, σbase, was taken as the standard deviation of the pixel intensity over the baseline frames.
For each frame, the estimated baseline pixel intensity was subtracted from the observed pixel intensity, so that the signal solely from contrast, Si, is determined. In instances where attenuation caused shadowing in the image, the observed pixel intensity may have decreased to an extent to be less than the estimated baseline intensity. In such instances, Si, was taken to be zero.
For the image with the maximum signal above the noise, Sk, a composite signal to noise ratio was determined from the signal, Sk, and the signal from the following cardiac cycle, Sk+I. A peak signal may arise from spurious noise, so the signals were weighted as follows: ##EQU1## The signal-to-noise ratio was treated as a standardized, normal variable and the probability density of obtaining the observed S/N from random noise fluctuations was calculated as follows: ##EQU2## A pixel that had a large increase in the video intensity over the course of the injection of contrast agent compared to the baseline noise will have a large signal-to-noise ratio and a small probability of that signal-to-noise ratio deriving from noise alone.
Using this algorithm, a receiver operating curve (ROC) analysis determined the thresholds for perfusion by maximizing the area under the ROC curve. A pixel was considered to have brightened if the probability density was less than 0.28, corresponding to S/N≧0.84. A region was considered to have been perfused if 40% of the pixels in the region had brightened. At these thresholds, the area under the ROC curve was 0.84. (An area of 0.5 indicates that a procedure agrees in a random fashion with the "gold standard" of perceptible radio-labeled microspheres, while an area of 1.0 corresponds to perfect agreement with the "gold standard".) The operating point along the ROC curve was chosen to be where the slope of the line tangent to the curve is 1, a point that shows no bias toward sensitivity or specificity. At this operating point, the sensitivity is 79%, the specificity is 72%, the positive predictive value is 66%, and the negative predictive value is 69%.
Assessments were made at end systole and diastole. For comparison to the ratings of a panel of echocardiographers, the ratings at end systole and end diastole were combined (and referred to simply as "QUAMP"), so that if perfusion was observed at either point in the cardiac cycle, it was considered as perfused.
While the QUAMP algorithm described above is one expert system that may be applied in the mixture-of-experts module 74, other algorithms may be used as well that provide measurements of texture. Such algorithms may, for example, measure texture in the presence of contrast agent using such techniques as the Gabor transform; fractal dimension (Veenland, et al., Med. Phys., 23 585 (1996)); moments of the histogram distribution (e.g., standard deviation, skewness, kurtosis); spatial gray level dependence matrix (co-occurrence matrix) (Chan, et al., Phys. Med. Bio., 40 857 (1995)) for factors such as correlation, entropy, energy (angular second moment), inertia, inverse different moment, sum average, sum entropy, difference entropy; autocorrelation; gray level run lengths (Skorton, et al., Circulation, 66 217 (1993)); parameters of the distribution (Goldberg, et al., Trans. Med. Imag., 12 687 (1993)); and/or characteristic function ("Guide to Standard Mathematica® Packages", version 2.2, Adamchik et. al. (Wolfram Research, Champaign, Ill. 1993). In addition to texture characteristics, any other information obtained from an echocardiogram may be analyzed for use as an expert system (e.g., wall thickening and wall motion).
Summary
In summary, the preferred embodiment of the present invention includes: (1) a data acquisition system for acquiring ultrasound image data indicative of a region of interest in the presence of attenuation from interposed contrast agent; (2) an optional signal conditioning stage to remove signals (e.g., noise) from the input data; and (3) an analysis system designed to detect "texture" characteristics that distinguish healthy tissue from diseased tissue even in the presence of the contrast agent. Since the invention can be implemented using relatively inexpensive equipment, the invention provides an inexpensive method and apparatus for accurately and consistently analyzing complex input data representing varied anatomical conditions in which the characteristics are very complex, enigmatic, or are hidden among or overwhelmed by competing noise and other signals which obscure the characteristics of interest.
A number of embodiments of the present invention have been described. Nevertheless, it will be understood that various modifications may be made without departing from the spirit and scope of the invention. For example, the present invention can be applied to characterizing two-dimensional image data derived from X-rays, MRI devices, CT, PET, and other image-generating techniques where regions of interest are obscured by the presence of a contrast agent until the contrast agent clears sufficiently from the organ. Further, the imaging sonification frequency may be alternated between relatively high frequency (e.g., more than 10 fps) and relatively low frequency (e.g., less than or equal to about 10 fps) in order to provide "real-time" views versus intermittent but higher "contrast" (due to better signal-to-noise ratio) views. As another example, the region of interest may be selected before generation of intermediate images. Accordingly, it is to be understood that the invention is not to be limited by the specific illustrated embodiment, but only by the scope of the appended claims.

Claims (66)

What is claimed is:
1. A method of characterizing a region of interest in a plurality of images of a contrast-enhanced organ, comprising the steps of:
(a) generating a set of digitized images of the region of interest;
(b) analyzing the set of digitized images of the region of interest by means of an analysis system configured to recognize contrast agent texture patterns in such digitized images indicative of tissue health in the organ;
(c) indicating, based on such analysis, if the region of interest is probably normal or abnormal.
2. The method of claim 1, wherein the images are ultrasound images.
3. The method of claims 1 or 2, wherein the images are generated by a B-mode ultrasound system.
4. The method of claims 1 or 2, wherein the images are generated by a Doppler ultrasound system.
5. The method of claims 1 or 2, wherein the images are generated by a harmonic ultrasound system.
6. The method of claims 1 or 2, wherein the images are generated by a three-dimensional ultrasound system.
7. The method of claims 1 or 2, wherein the organ is a heart.
8. The method of claim 7, wherein the images are taken at approximately the same point in the cardiac cycle of the heart.
9. The method of claims 1 or 2, wherein the organ is a kidney.
10. The method of claims 1 or 2, wherein the organ is a brain.
11. The method of claims 1 or 2, wherein the organ is a liver.
12. The method of claims 1 or 2, wherein the organ is a testis.
13. The method of claims 1 or 2, wherein the organ is a muscle.
14. The method of claim 1, wherein the indication of normal or abnormal pertains to degree of blood flow within the organ.
15. The method of claim 1, wherein the step of analyzing the set of images comprises the further steps of:
(a) generating a plurality of filtered intermediate images from each image;
(b) applying a set of expert analysis modules to the intermediate images to classify the set of images as probably normal or abnormal.
16. The method of claim 1, wherein the contrast agent is chosen from the group consisting of liquid emulsions, solids, encapsulated fluids, encapsulated biocompatible gases, and combinations thereof.
17. The method of claim 16, wherein the contrast agent employs a fluorinated gas or liquid.
18. The method of claim 1, wherein the images are x-ray images.
19. The method of claim 1, wherein the images are MRI images.
20. The method of claim 1, wherein the images are CT images.
21. The method of claim 1, wherein the images are PET images.
22. The method of claim 1, wherein the images are SPECT images.
23. A system for characterizing a region of interest in a plurality of images of a contrast-enhanced organ, comprising:
(a) means for generating a set of digitized images of the region of interest;
(b) means for analyzing the set of digitized images of the region of interest by means of an analysis system configured to recognize contrast agent texture patterns in such digitized images indicative of tissue health in the organ;
(c) means for indicating, based on such analysis, if the region of interest is probably normal or abnormal.
24. The system of claim 23, wherein the images are ultrasound images.
25. The system of claims 23 or 24, wherein the images are generated by a B-mode ultrasound system.
26. The system of claims 23 or 24, wherein the images are generated by a Doppler ultrasound system.
27. The system of claims 23 or 24, wherein the images are generated by a harmonic ultrasound system.
28. The system of claims 23 or 24, wherein the images are generated by a three-dimensional ultrasound system.
29. The system of claims 23 or 24, wherein the organ is a heart.
30. The system of claim 29, wherein the images are taken at approximately the same point in the cardiac cycle of the heart.
31. The system of claims 23 or 24, wherein the organ is a kidney.
32. The system of claims 23 or 24, wherein the organ is a brain.
33. The system of claims 23 or 24, wherein the organ is a liver.
34. The system of claims 23 or 24, wherein the organ is a testis.
35. The system of claims 23 or 24, wherein the organ is a muscle.
36. The system of claim 23, wherein the indication of normal or abnormal pertains to degree of blood flow within the organ.
37. The system of claim 23, wherein the means for analyzing the set of images further comprises:
(a) means for generating a plurality of filtered intermediate images from each image;
(b) means for applying a set of expert analysis modules to the intermediate images to classify the set of images as probably normal or abnormal.
38. The system of claim 23, wherein the contrast agent is chosen from the group consisting of liquid emulsions, solids, encapsulated fluids, encapsulated biocompatible gases, and combinations thereof.
39. The system of claim 38, wherein the contrast agent employs a fluorinated gas or liquid.
40. The system of claim 23, wherein the images are x-ray images.
41. The system of claim 23, wherein the images are MRI images.
42. The system of claim 23, wherein the images are CT images.
43. The system of claim 23, wherein the images are PET images.
44. The system of claim 23, wherein the images are SPECT images.
45. A computer program, residing on a computer-readable medium, for characterizing a region of interest in a plurality of images of a contrast-enhanced organ, the computer program comprising instructions for causing a processor to:
(a) receive a set of digitized images of the region of interest;
(b) analyze the set of digitized images of the region of interest by means of an analysis system configured to recognize contrast agent texture patterns in such digitized images indicative of tissue health in the organ;
(c) indicate, based on such analysis, if the region of interest is probably normal or abnormal.
46. The computer program of claim 45, wherein the images are ultrasound images.
47. The computer program of claims 45 or 46, wherein the images are generated by a B-mode ultrasound system.
48. The computer program of claims 45 or 46, wherein the images are generated by a Doppler ultrasound system.
49. The computer program of claims 45 or 46, wherein the images are generated by a harmonic ultrasound system.
50. The computer program of claims 45 or 46, wherein the images are generated by a three-dimensional ultrasound system.
51. The computer program of claims 45 or 46, wherein the organ is a heart.
52. The computer program of claim 51, wherein the images are taken at approximately the same point in the cardiac cycle of the heart.
53. The computer program of claims 45 or 46, wherein the organ is a kidney.
54. The computer program of claims 45 or 46, wherein the organ is a brain.
55. The computer program of claims 45 or 46, wherein the organ is a liver.
56. The computer program of claims 45 or 46, wherein the organ is a testis.
57. The computer program of claims 45 or 46, wherein the organ is a muscle.
58. The computer program of claim 45, wherein the indication of normal or abnormal pertains to degree of blood flow within the organ.
59. The computer program of claim 45, wherein the computer program further comprises instructions for causing the processor to:
(a) generate plurality of filtered intermediate images from each image;
(b) apply a set of expert analysis modules to the intermediate images to classify the set of images as probably normal or abnormal.
60. The computer program of claim 45, wherein the contrast agent is chosen from the group consisting of liquid emulsions, solids, encapsulated fluids, encapsulated biocompatible gases, and combinations thereof.
61. The computer program of claim 60, wherein the contrast agent employs a fluorinated gas or liquid.
62. The computer program of claim 45, wherein the images are x-ray images.
63. The computer program of claim 45, wherein the images are MRI images.
64. The computer program of claim 45, wherein the images are CT images.
65. The computer program of claim 45, wherein the images are PET images.
66. The computer program of claim 45, wherein the images are SPECT images.
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Cited By (96)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6077225A (en) * 1998-01-23 2000-06-20 Hewlett-Packard Company Ultrasound method for enhancing image presentation when contrast agents are used
US6149594A (en) * 1999-05-05 2000-11-21 Agilent Technologies, Inc. Automatic ultrasound measurement system and method
US6193660B1 (en) * 1999-03-31 2001-02-27 Acuson Corporation Medical diagnostic ultrasound system and method for region of interest determination
US6236942B1 (en) 1998-09-15 2001-05-22 Scientific Prediction Incorporated System and method for delineating spatially dependent objects, such as hydrocarbon accumulations from seismic data
US6275613B1 (en) 1999-06-03 2001-08-14 Medsim Ltd. Method for locating a model in an image
US6306090B1 (en) * 1992-01-10 2001-10-23 Peter J. Wilk Ultrasonic medical system and associated method
US20010041838A1 (en) * 1995-07-26 2001-11-15 Holupka Edward J. Virtual reality 3D visualization for surgical procedures
US6319204B1 (en) * 2000-01-26 2001-11-20 George A Brock-Fisher Ultrasonic method for indicating a rate of perfusion
US6322511B1 (en) * 1996-12-04 2001-11-27 Acuson Corporation Methods and apparatus for ultrasound image quantification
US6341172B1 (en) * 1997-02-28 2002-01-22 Siemens Medical Systems, Inc. Acquisition scheme for an electron portal imaging system
US6353803B1 (en) * 1996-01-18 2002-03-05 Yeda Research And Development Co., Ltd. At The Welzmann Institute Of Science Apparatus for monitoring a system in which a fluid flows
US6366862B1 (en) * 2000-04-19 2002-04-02 National Instruments Corporation System and method for analyzing signals generated by rotating machines
US6418237B1 (en) * 1998-08-25 2002-07-09 Fuji Photo Film Co., Ltd. Abnormal pattern detection processing method and system and image display terminal
US6445945B1 (en) * 2000-06-26 2002-09-03 André Arsenault Non-invasive detection of endothelial dysfunction by blood flow measurement in opposed limbs using tracer injection
US6461303B2 (en) * 2000-01-19 2002-10-08 Bjorn Angelsen Method of detecting ultrasound contrast agent in soft tissue, and quantitating blood perfusion through regions of tissue
US6468216B1 (en) * 2000-08-24 2002-10-22 Kininklijke Philips Electronics N.V. Ultrasonic diagnostic imaging of the coronary arteries
US20020198454A1 (en) * 2001-05-18 2002-12-26 Mayo Foundation For Medical Education And Research Ultrasound laboratory information management system and method
US6503203B1 (en) * 2001-01-16 2003-01-07 Koninklijke Philips Electronics N.V. Automated ultrasound system for performing imaging studies utilizing ultrasound contrast agents
US20030012450A1 (en) * 2001-06-08 2003-01-16 Elisabeth Soubelet Method and apparatus for displaying images of an object
US20030032882A1 (en) * 2000-11-15 2003-02-13 Takashi Mochizuki Ultrasonic diagnosic device
US6574565B1 (en) 1998-09-15 2003-06-03 Ronald R. Bush System and method for enhanced hydrocarbon recovery
US20030135102A1 (en) * 2000-05-18 2003-07-17 Burdette Everette C. Method and system for registration and guidance of intravascular treatment
US20030135115A1 (en) * 1997-11-24 2003-07-17 Burdette Everette C. Method and apparatus for spatial registration and mapping of a biopsy needle during a tissue biopsy
US20030229282A1 (en) * 1997-11-24 2003-12-11 Burdette Everette C. Real time brachytherapy spatial registration and visualization system
US20040022438A1 (en) * 2002-08-02 2004-02-05 Hibbard Lyndon S. Method and apparatus for image segmentation using Jensen-Shannon divergence and Jensen-Renyi divergence
US6728661B1 (en) * 1999-06-25 2004-04-27 Consiglio Nazionale Delle Ricerche Nondestructive acoustic method and device, for the determination of detachments of mural paintings
US6735331B1 (en) * 2000-09-05 2004-05-11 Talia Technology Ltd. Method and apparatus for early detection and classification of retinal pathologies
US20040133083A1 (en) * 2002-11-13 2004-07-08 Siemens Corporate Research Inc. System and method for real-time feature sensitivity analysis based on contextual information
US20040147840A1 (en) * 2002-11-08 2004-07-29 Bhavani Duggirala Computer aided diagnostic assistance for medical imaging
US6810341B2 (en) 2000-04-19 2004-10-26 National Instruments Corporation Time varying harmonic analysis including determination of order components
US6813375B2 (en) * 2001-06-15 2004-11-02 University Of Chicago Automated method and system for the delineation of the chest wall in computed tomography scans for the assessment of pleural disease
US20050147958A1 (en) * 1997-09-23 2005-07-07 Waleed Hassanein Compositions, method and devices for maintaining an organ
US20050182316A1 (en) * 2002-08-29 2005-08-18 Burdette Everette C. Method and system for localizing a medical tool
US20050207538A1 (en) * 2002-04-03 2005-09-22 Sabine Mollus Method of determining an image from an image sequence
US20060079778A1 (en) * 2004-10-07 2006-04-13 Zonare Medical Systems, Inc. Ultrasound imaging system parameter optimization via fuzzy logic
US20060079775A1 (en) * 2002-06-07 2006-04-13 Mcmorrow Gerald Systems and methods for quantification and classification of fluids in human cavities in ultrasound images
US20060111633A1 (en) * 2002-08-09 2006-05-25 Mcmorrow Gerald Instantaneous ultrasonic measurement of bladder volume
US20060148062A1 (en) * 2004-10-07 2006-07-06 Transmedics, Inc. Systems and methods for ex-vivo organ care
EP1712182A1 (en) * 2005-04-14 2006-10-18 Esaote S.p.A. Method of ultrasonic detection and localization of contrast agent microbubbles and method for local drug administration by using microbubble carriers
US20070081703A1 (en) * 2005-10-12 2007-04-12 Industrial Widget Works Company Methods, devices and systems for multi-modality integrated imaging
US20070150239A1 (en) * 1997-01-21 2007-06-28 Hadassa Degani Apparatus for monitoring a system with time in space and method therefor
US20070167809A1 (en) * 2002-07-22 2007-07-19 Ep Medsystems, Inc. Method and System For Estimating Cardiac Ejection Volume And Placing Pacemaker Electrodes Using Speckle Tracking
US20070165915A1 (en) * 2002-07-03 2007-07-19 Manfred Fuchs Method and system for displaying confidence intervals for source reconstruction
US20070274584A1 (en) * 2004-02-27 2007-11-29 Leow Wee K Method and System for Detection of Bone Fractures
US20080009752A1 (en) * 2006-07-07 2008-01-10 Butler Michael H System for Cardiovascular Data Display and Diagnosis
US20080146932A1 (en) * 2002-06-07 2008-06-19 Vikram Chalana 3D ultrasound-based instrument for non-invasive measurement of Amniotic Fluid Volume
US20080146922A1 (en) * 2006-10-24 2008-06-19 Zonare Medical Systems, Inc. Control of user interfaces and displays for portable ultrasound unit and docking station
US20080240338A1 (en) * 2007-03-26 2008-10-02 Siemens Aktiengesellschaft Evaluation method for mapping the myocardium of a patient
US7438685B2 (en) 2001-11-05 2008-10-21 Computerized Medical Systems, Inc. Apparatus and method for registration, guidance and targeting of external beam radiation therapy
US20090156947A1 (en) * 2007-05-22 2009-06-18 Seward James B Knowledgebased image informatics system and method
US20090197324A1 (en) * 2008-01-31 2009-08-06 Robert Fishman Systems and methods for ex vivo lung care
US20090299186A1 (en) * 2008-05-30 2009-12-03 Volcano Corporation System and method for characterizing tissue based upon homomorphic deconvolution of backscattered ultrasound
US20100160768A1 (en) * 2008-12-24 2010-06-24 Marrouche Nassir F Therapeutic outcome assessment for atrial fibrillation
US20100160765A1 (en) * 2008-12-24 2010-06-24 Marrouche Nassir F Therapeutic success prediction for atrial fibrillation
US7819806B2 (en) 2002-06-07 2010-10-26 Verathon Inc. System and method to identify and measure organ wall boundaries
US20100303358A1 (en) * 2009-05-27 2010-12-02 Mausumi Acharyya Method for the automatic analysis of image data of a structure
US20110136096A1 (en) * 2006-04-19 2011-06-09 Transmedics, Inc. Systems and Methods for Ex Vivo Organ Care
US7991717B1 (en) 2001-09-10 2011-08-02 Bush Ronald R Optimal cessation of training and assessment of accuracy in a given class of neural networks
US8002705B1 (en) 2005-07-22 2011-08-23 Zonaire Medical Systems, Inc. Continuous transmit focusing method and apparatus for ultrasound imaging system
US8133181B2 (en) 2007-05-16 2012-03-13 Verathon Inc. Device, system and method to measure abdominal aortic aneurysm diameter
US20120078097A1 (en) * 2010-09-27 2012-03-29 Siemens Medical Solutions Usa, Inc. Computerized characterization of cardiac motion in medical diagnostic ultrasound
US8167803B2 (en) 2007-05-16 2012-05-01 Verathon Inc. System and method for bladder detection using harmonic imaging
US20120177260A1 (en) * 2011-01-10 2012-07-12 The Regents Of The University Of Michigan System and methods for detecting liver disease
US8221322B2 (en) 2002-06-07 2012-07-17 Verathon Inc. Systems and methods to improve clarity in ultrasound images
US8617150B2 (en) 2010-05-14 2013-12-31 Liat Tsoref Reflectance-facilitated ultrasound treatment
US8784318B1 (en) 2005-07-22 2014-07-22 Zonare Medical Systems, Inc. Aberration correction using channel data in ultrasound imaging system
US20140205166A1 (en) * 2012-01-23 2014-07-24 Said Benameur Image restoration system and method
US20140341454A1 (en) * 2012-05-18 2014-11-20 Said Benameur Method and system for the three-dimensional reconstruction of structures
US8956346B2 (en) 2010-05-14 2015-02-17 Rainbow Medical, Ltd. Reflectance-facilitated ultrasound treatment and monitoring
US9060669B1 (en) 2007-12-20 2015-06-23 Zonare Medical Systems, Inc. System and method for providing variable ultrasound array processing in a post-storage mode
US9078428B2 (en) 2005-06-28 2015-07-14 Transmedics, Inc. Systems, methods, compositions and solutions for perfusing an organ
US20150196281A1 (en) * 2012-08-07 2015-07-16 Konica Minolta, Inc. Medical data processing device, medical data processing method, and ultrasound diagnostic device
US9242122B2 (en) 2010-05-14 2016-01-26 Liat Tsoref Reflectance-facilitated ultrasound treatment and monitoring
US9301519B2 (en) 2004-10-07 2016-04-05 Transmedics, Inc. Systems and methods for ex-vivo organ care
US9457179B2 (en) 2007-03-20 2016-10-04 Transmedics, Inc. Systems for monitoring and applying electrical currents in an organ perfusion system
US20160354061A1 (en) * 2015-06-03 2016-12-08 George Mason University Method And Apparatus For Ultrasonic Analysis Of Brain Activity In Stroke Patients
US9707414B2 (en) 2012-02-14 2017-07-18 Rainbow Medical Ltd. Reflectance-facilitated ultrasound treatment and monitoring
US9713436B2 (en) 2011-10-31 2017-07-25 University Of Utah Research Foundation Patient specific scan parameters for MRI scanning
US9770593B2 (en) 2012-11-05 2017-09-26 Pythagoras Medical Ltd. Patient selection using a transluminally-applied electric current
WO2017181288A1 (en) * 2016-04-21 2017-10-26 The University Of British Columbia Echocardiographic image analysis
US9894894B2 (en) 2004-10-07 2018-02-20 Transmedics, Inc. Systems and methods for ex-vivo organ care and for using lactate as an indication of donor organ status
US10004557B2 (en) 2012-11-05 2018-06-26 Pythagoras Medical Ltd. Controlled tissue ablation
US10076112B2 (en) 2014-06-02 2018-09-18 Transmedic, Inc. Ex vivo organ care system
US10194655B2 (en) 2015-09-09 2019-02-05 Transmedics, Inc. Aortic cannula for ex vivo organ care system
US10383685B2 (en) 2015-05-07 2019-08-20 Pythagoras Medical Ltd. Techniques for use with nerve tissue
US20190266448A1 (en) * 2016-09-30 2019-08-29 General Electric Company System and method for optimization of deep learning architecture
CN110313943A (en) * 2018-03-30 2019-10-11 佳能医疗系统株式会社 Medical diagnostic apparatus, medical image-processing apparatus and image processing method
US10478249B2 (en) 2014-05-07 2019-11-19 Pythagoras Medical Ltd. Controlled tissue ablation techniques
US10726545B2 (en) 2008-12-24 2020-07-28 University Of Utah Research Foundation Systems and methods for administering treatment of atrial fibrillation
US10751029B2 (en) 2018-08-31 2020-08-25 The University Of British Columbia Ultrasonic image analysis
JP2021506541A (en) * 2017-12-13 2021-02-22 オックスフォード ユニバーシティー イノベーション リミテッド Diagnostic modeling methods and equipment
US20210113190A1 (en) * 2018-06-22 2021-04-22 Koninklijke Philips N.V. Ultrasound lesion assessment and associated devices, systems, and methods
US11450000B2 (en) 2017-12-13 2022-09-20 Oxford University Innovation Limited Image analysis for scoring motion of a heart wall
US20220338834A1 (en) * 2020-01-08 2022-10-27 Vitruvia Holdings Inc. Methods and computing system for processing ultrasound image to determine health of subdermal tissue
US11678932B2 (en) 2016-05-18 2023-06-20 Symap Medical (Suzhou) Limited Electrode catheter with incremental advancement
US11856944B2 (en) 2011-04-14 2024-01-02 Transmedics, Inc. Organ care solution for ex-vivo machine perfusion of donor lungs

Families Citing this family (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2021054901A1 (en) * 2019-09-19 2021-03-25 Ngee Ann Polytechnic Automated system and method of monitoring anatomical structures

Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US5260871A (en) * 1991-07-31 1993-11-09 Mayo Foundation For Medical Education And Research Method and apparatus for diagnosis of breast tumors
US5417215A (en) * 1994-02-04 1995-05-23 Long Island Jewish Medical Center Method of tissue characterization by ultrasound
US5425366A (en) * 1988-02-05 1995-06-20 Schering Aktiengesellschaft Ultrasonic contrast agents for color Doppler imaging
US5577505A (en) * 1996-02-06 1996-11-26 Hewlett-Packard Company Means for increasing sensitivity in non-linear ultrasound imaging systems

Patent Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US5425366A (en) * 1988-02-05 1995-06-20 Schering Aktiengesellschaft Ultrasonic contrast agents for color Doppler imaging
US5260871A (en) * 1991-07-31 1993-11-09 Mayo Foundation For Medical Education And Research Method and apparatus for diagnosis of breast tumors
US5417215A (en) * 1994-02-04 1995-05-23 Long Island Jewish Medical Center Method of tissue characterization by ultrasound
US5577505A (en) * 1996-02-06 1996-11-26 Hewlett-Packard Company Means for increasing sensitivity in non-linear ultrasound imaging systems

Non-Patent Citations (22)

* Cited by examiner, † Cited by third party
Title
Abe, et al., Computer Aided Detection of Diffuse Liver Disease in Ultrasound Images, Investigative Radiology, 27:71, Jan. 1992. *
Abe, et al., Computer-Aided Detection of Diffuse Liver Disease in Ultrasound Images, Investigative Radiology, 27:71, Jan. 1992.
Brotherton and Mears, Application of Neural Nets to Feature Fusion, Presented at 26th Asilomar, Conference on Signals, Systems & Computers, Oct. 1992. *
Cios, et al., Use of Neural Networks in Detecting Cardiac Diseases from Echocardiographic Images, IEEE Engineering in Medicine and Biology, pp. 58 60, Sep. 1990. *
Cios, et al., Use of Neural Networks in Detecting Cardiac Diseases from Echocardiographic Images, IEEE Engineering in Medicine and Biology, pp. 58-60, Sep. 1990.
DaPonte and Sherman, Classification of Ultrasonic Image Texture by Statistical Discriminant Analysis and Neural Networks, Computerized Medical Imaging and Graphics 15(1):3, Jan. Feb. 1991. *
DaPonte and Sherman, Classification of Ultrasonic Image Texture by Statistical Discriminant Analysis and Neural Networks, Computerized Medical Imaging and Graphics 15(1):3, Jan.-Feb. 1991.
Fisher, et al., Neural Networks in Ventilation Perfusion Imaging; Part I. Effects of Interpretive Criteria and Network Architecture, Radiology, 198(3):699, Mar. 1996. *
Fisher, et al., Neural Networks in Ventilation-Perfusion Imaging; Part I. Effects of Interpretive Criteria and Network Architecture, Radiology, 198(3):699, Mar. 1996.
Fujita, et al., Neural network approach for the computer aided diagnosis of coronary artery diseases in myocardial SPECT bull s eye images, Radiologia diagnostica, 35(1):15, 1994. *
Fujita, et al., Neural network approach for the computer-aided diagnosis of coronary artery diseases in myocardial SPECT bull's eye images, Radiologia diagnostica, 35(1):15, 1994.
Gail A. Carpenter, Neural Network Models for Pattern Recognition and Associative Memory, Neural Networks, 2:243, 1989. *
Hansen and Salamon, Neural Network Ensembles, IEEE Transactions of Pattern Analysis and Machine Intelligence, 12(10):993, Oct. 1990. *
Marple, et al., Application of Time Frequency and Time Scale Analysis to Underwater Acoustic Transients, Presented at 26th Asilomar, Conference on Signals, Systems & Computers, Oct. 1992. *
Marple, et al., Application of Time-Frequency and Time-Scale Analysis to Underwater Acoustic Transients, Presented at 26th Asilomar, Conference on Signals, Systems & Computers, Oct. 1992.
Wang and Karvelis, Computer interpretation of thallium SPECT studies based on neural network analysis, SPIE 1445:574, 1991. *
Watabe and Mizoshiri, Discrimination of Normal and Infarcted Myocardium and Consideration of the Textural Distinction Using Neural Network, Faculty of Science and Engineering, Ritsumeikan University, Kyoto shi 803, pp. 1 14 (Japanese copy and translation provided). *
Watabe and Mizoshiri, Discrimination of Normal and Infarcted Myocardium and Consideration of the Textural Distinction Using Neural Network, Faculty of Science and Engineering, Ritsumeikan University, Kyoto-shi 803, pp. 1-14 (Japanese copy and translation provided).
Yi, et al. A New Neural Network Algorithm to Study Myocardial Reflected Ultrasound for Tissue Characterization, IEEE Bioengineering Proceedings of the Northeast Conference, pp. 109 110, 1993. *
Yi, et al. A New Neural Network Algorithm to Study Myocardial Reflected Ultrasound for Tissue Characterization, IEEE Bioengineering Proceedings of the Northeast Conference, pp. 109-110, 1993.
Yi, et al., Study of Echocardiogram for Myocardial Infarction Using Neural Networks, Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, 15:255, Oct. 28 31, 1993. *
Yi, et al., Study of Echocardiogram for Myocardial Infarction Using Neural Networks, Proceedings of the Annual International Conference of the IEEE Engineering in Medicine and Biology Society, 15:255, Oct. 28-31, 1993.

Cited By (172)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6306090B1 (en) * 1992-01-10 2001-10-23 Peter J. Wilk Ultrasonic medical system and associated method
US20010041838A1 (en) * 1995-07-26 2001-11-15 Holupka Edward J. Virtual reality 3D visualization for surgical procedures
US7171255B2 (en) 1995-07-26 2007-01-30 Computerized Medical Systems, Inc. Virtual reality 3D visualization for surgical procedures
US6611778B2 (en) * 1996-01-18 2003-08-26 Yeda Research And Development Co., Ltd. Apparatus for monitoring a system in which a fluid flows
US6353803B1 (en) * 1996-01-18 2002-03-05 Yeda Research And Development Co., Ltd. At The Welzmann Institute Of Science Apparatus for monitoring a system in which a fluid flows
US6322511B1 (en) * 1996-12-04 2001-11-27 Acuson Corporation Methods and apparatus for ultrasound image quantification
US20070150239A1 (en) * 1997-01-21 2007-06-28 Hadassa Degani Apparatus for monitoring a system with time in space and method therefor
US7881897B2 (en) 1997-01-21 2011-02-01 Yeda Research And Development Co. Ltd. Apparatus for monitoring a system with time in space and method therefor
US8069002B2 (en) 1997-01-21 2011-11-29 Yeda Research And Development Co., Ltd. Apparatus for monitoring a system with time in space and method therefor
US20090076759A1 (en) * 1997-01-21 2009-03-19 Hadassa Degani Apparatus for monitoring a system with time in space and method therefor
US7437256B2 (en) 1997-01-21 2008-10-14 Yeda Research And Development Co. Ltd. Apparatus for monitoring a system with time in space and method therefor
US20110093231A1 (en) * 1997-01-21 2011-04-21 Hadassa Degani Apparatus for monitoring a system with time in space and method therefor
US6341172B1 (en) * 1997-02-28 2002-01-22 Siemens Medical Systems, Inc. Acquisition scheme for an electron portal imaging system
US8409846B2 (en) * 1997-09-23 2013-04-02 The United States Of America As Represented By The Department Of Veteran Affairs Compositions, methods and devices for maintaining an organ
US9756851B2 (en) 1997-09-23 2017-09-12 The Department Of Veteran Affairs Compositions, methods and devices for maintaining an organ
US9756849B2 (en) 1997-09-23 2017-09-12 The Department Of Veteran Affairs Compositions, methods and devices for maintaining an organ
US20050147958A1 (en) * 1997-09-23 2005-07-07 Waleed Hassanein Compositions, method and devices for maintaining an organ
US9756850B2 (en) 1997-09-23 2017-09-12 The Department Of Veteran Affairs Compositions, methods and devices for maintaining an organ
US7201715B2 (en) 1997-11-24 2007-04-10 Computerized Medical Systems, Inc. Real time brachytherapy spatial registration and visualization system
US20030135115A1 (en) * 1997-11-24 2003-07-17 Burdette Everette C. Method and apparatus for spatial registration and mapping of a biopsy needle during a tissue biopsy
US20030229282A1 (en) * 1997-11-24 2003-12-11 Burdette Everette C. Real time brachytherapy spatial registration and visualization system
US6077225A (en) * 1998-01-23 2000-06-20 Hewlett-Packard Company Ultrasound method for enhancing image presentation when contrast agents are used
US6418237B1 (en) * 1998-08-25 2002-07-09 Fuji Photo Film Co., Ltd. Abnormal pattern detection processing method and system and image display terminal
US6411903B2 (en) 1998-09-15 2002-06-25 Ronald R. Bush System and method for delineating spatially dependent objects, such as hydrocarbon accumulations from seismic data
US6574565B1 (en) 1998-09-15 2003-06-03 Ronald R. Bush System and method for enhanced hydrocarbon recovery
US6236942B1 (en) 1998-09-15 2001-05-22 Scientific Prediction Incorporated System and method for delineating spatially dependent objects, such as hydrocarbon accumulations from seismic data
US6193660B1 (en) * 1999-03-31 2001-02-27 Acuson Corporation Medical diagnostic ultrasound system and method for region of interest determination
US6149594A (en) * 1999-05-05 2000-11-21 Agilent Technologies, Inc. Automatic ultrasound measurement system and method
US6275613B1 (en) 1999-06-03 2001-08-14 Medsim Ltd. Method for locating a model in an image
US6728661B1 (en) * 1999-06-25 2004-04-27 Consiglio Nazionale Delle Ricerche Nondestructive acoustic method and device, for the determination of detachments of mural paintings
US6461303B2 (en) * 2000-01-19 2002-10-08 Bjorn Angelsen Method of detecting ultrasound contrast agent in soft tissue, and quantitating blood perfusion through regions of tissue
US6319204B1 (en) * 2000-01-26 2001-11-20 George A Brock-Fisher Ultrasonic method for indicating a rate of perfusion
US6453273B1 (en) 2000-04-19 2002-09-17 National Instruments Corporation System for analyzing signals generated by rotating machines
US6366862B1 (en) * 2000-04-19 2002-04-02 National Instruments Corporation System and method for analyzing signals generated by rotating machines
US6810341B2 (en) 2000-04-19 2004-10-26 National Instruments Corporation Time varying harmonic analysis including determination of order components
US6477472B2 (en) 2000-04-19 2002-11-05 National Instruments Corporation Analyzing signals generated by rotating machines using an order mask to select desired order components of the signals
US20030135102A1 (en) * 2000-05-18 2003-07-17 Burdette Everette C. Method and system for registration and guidance of intravascular treatment
US6445945B1 (en) * 2000-06-26 2002-09-03 André Arsenault Non-invasive detection of endothelial dysfunction by blood flow measurement in opposed limbs using tracer injection
US6468216B1 (en) * 2000-08-24 2002-10-22 Kininklijke Philips Electronics N.V. Ultrasonic diagnostic imaging of the coronary arteries
US6735331B1 (en) * 2000-09-05 2004-05-11 Talia Technology Ltd. Method and apparatus for early detection and classification of retinal pathologies
US6875177B2 (en) * 2000-11-15 2005-04-05 Aloka Co., Ltd. Ultrasonic diagnostic apparatus
US20030032882A1 (en) * 2000-11-15 2003-02-13 Takashi Mochizuki Ultrasonic diagnosic device
US6503203B1 (en) * 2001-01-16 2003-01-07 Koninklijke Philips Electronics N.V. Automated ultrasound system for performing imaging studies utilizing ultrasound contrast agents
US20020198454A1 (en) * 2001-05-18 2002-12-26 Mayo Foundation For Medical Education And Research Ultrasound laboratory information management system and method
US8417536B2 (en) 2001-05-18 2013-04-09 Mayo Foundation For Medical Education And Research Ultrasound laboratory information management system and method
US20030012450A1 (en) * 2001-06-08 2003-01-16 Elisabeth Soubelet Method and apparatus for displaying images of an object
US7248727B2 (en) * 2001-06-08 2007-07-24 Ge Medical Systems Global Technology Company, Llc Method and apparatus for displaying images of an object
US6813375B2 (en) * 2001-06-15 2004-11-02 University Of Chicago Automated method and system for the delineation of the chest wall in computed tomography scans for the assessment of pleural disease
US7991717B1 (en) 2001-09-10 2011-08-02 Bush Ronald R Optimal cessation of training and assessment of accuracy in a given class of neural networks
US7438685B2 (en) 2001-11-05 2008-10-21 Computerized Medical Systems, Inc. Apparatus and method for registration, guidance and targeting of external beam radiation therapy
US20050207538A1 (en) * 2002-04-03 2005-09-22 Sabine Mollus Method of determining an image from an image sequence
US7819806B2 (en) 2002-06-07 2010-10-26 Verathon Inc. System and method to identify and measure organ wall boundaries
US8221321B2 (en) 2002-06-07 2012-07-17 Verathon Inc. Systems and methods for quantification and classification of fluids in human cavities in ultrasound images
US8221322B2 (en) 2002-06-07 2012-07-17 Verathon Inc. Systems and methods to improve clarity in ultrasound images
US20080146932A1 (en) * 2002-06-07 2008-06-19 Vikram Chalana 3D ultrasound-based instrument for non-invasive measurement of Amniotic Fluid Volume
US20060079775A1 (en) * 2002-06-07 2006-04-13 Mcmorrow Gerald Systems and methods for quantification and classification of fluids in human cavities in ultrasound images
US20070165915A1 (en) * 2002-07-03 2007-07-19 Manfred Fuchs Method and system for displaying confidence intervals for source reconstruction
US7840039B2 (en) * 2002-07-03 2010-11-23 Compumedics Limited Method and system for displaying confidence intervals for source reconstruction
US20070167809A1 (en) * 2002-07-22 2007-07-19 Ep Medsystems, Inc. Method and System For Estimating Cardiac Ejection Volume And Placing Pacemaker Electrodes Using Speckle Tracking
US7187800B2 (en) 2002-08-02 2007-03-06 Computerized Medical Systems, Inc. Method and apparatus for image segmentation using Jensen-Shannon divergence and Jensen-Renyi divergence
US20040022438A1 (en) * 2002-08-02 2004-02-05 Hibbard Lyndon S. Method and apparatus for image segmentation using Jensen-Shannon divergence and Jensen-Renyi divergence
US8308644B2 (en) 2002-08-09 2012-11-13 Verathon Inc. Instantaneous ultrasonic measurement of bladder volume
US20060111633A1 (en) * 2002-08-09 2006-05-25 Mcmorrow Gerald Instantaneous ultrasonic measurement of bladder volume
US9993225B2 (en) 2002-08-09 2018-06-12 Verathon Inc. Instantaneous ultrasonic echo measurement of bladder volume with a limited number of ultrasound beams
US20050182316A1 (en) * 2002-08-29 2005-08-18 Burdette Everette C. Method and system for localizing a medical tool
US7244230B2 (en) 2002-11-08 2007-07-17 Siemens Medical Solutions Usa, Inc. Computer aided diagnostic assistance for medical imaging
US20040147840A1 (en) * 2002-11-08 2004-07-29 Bhavani Duggirala Computer aided diagnostic assistance for medical imaging
US20040133083A1 (en) * 2002-11-13 2004-07-08 Siemens Corporate Research Inc. System and method for real-time feature sensitivity analysis based on contextual information
US7087018B2 (en) * 2002-11-13 2006-08-08 Siemens Medical Solutions Usa, Inc. System and method for real-time feature sensitivity analysis based on contextual information
US8064660B2 (en) * 2004-02-27 2011-11-22 National University Of Singapore Method and system for detection of bone fractures
US20070274584A1 (en) * 2004-02-27 2007-11-29 Leow Wee K Method and System for Detection of Bone Fractures
US9215867B2 (en) 2004-10-07 2015-12-22 Transmedics, Inc. Systems and methods for ex-vivo organ care
US10314303B2 (en) 2004-10-07 2019-06-11 Transmedics, Inc. Systems and methods for ex-vivo organ care
US11570985B2 (en) 2004-10-07 2023-02-07 Transmedics, Inc. Systems and methods for ex-vivo organ care and for using lactate as an indication of donor organ status
US8357094B2 (en) 2004-10-07 2013-01-22 Zonare Medical Systems Inc. Ultrasound imaging system parameter optimization via fuzzy logic
US11723357B2 (en) 2004-10-07 2023-08-15 Transmedics, Inc. Systems and methods for ex-vivo organ care
US10736314B2 (en) 2004-10-07 2020-08-11 Transmedics, Inc. Systems and methods for ex-vivo organ care and for using lactate as an indication of donor organ status
US9894894B2 (en) 2004-10-07 2018-02-20 Transmedics, Inc. Systems and methods for ex-vivo organ care and for using lactate as an indication of donor organ status
US10321676B2 (en) 2004-10-07 2019-06-18 Transmedics, Inc. System and methods for ex-vivo organ care and for using lactate as an indication of donor organ status
US20060148062A1 (en) * 2004-10-07 2006-07-06 Transmedics, Inc. Systems and methods for ex-vivo organ care
US7627386B2 (en) 2004-10-07 2009-12-01 Zonaire Medical Systems, Inc. Ultrasound imaging system parameter optimization via fuzzy logic
US9301519B2 (en) 2004-10-07 2016-04-05 Transmedics, Inc. Systems and methods for ex-vivo organ care
US20100189329A1 (en) * 2004-10-07 2010-07-29 Zonare Medical Systems Inc. Ultrasound Imaging System Parameter Optimization Via Fuzzy Logic
US20060079778A1 (en) * 2004-10-07 2006-04-13 Zonare Medical Systems, Inc. Ultrasound imaging system parameter optimization via fuzzy logic
US11191263B2 (en) 2004-10-07 2021-12-07 Transmedics, Inc. Systems and methods for ex-vivo organ care
US9055740B2 (en) 2004-10-07 2015-06-16 Transmedics, Inc. Systems and methods for ex-vivo organ care
US7981040B2 (en) 2005-04-14 2011-07-19 Esaote, S.P.A. Method of ultrasonic detection and localization of contrast agent microbubbles and method for local drug administration by using microbubble carriers
EP1712182A1 (en) * 2005-04-14 2006-10-18 Esaote S.p.A. Method of ultrasonic detection and localization of contrast agent microbubbles and method for local drug administration by using microbubble carriers
US20070016051A1 (en) * 2005-04-14 2007-01-18 Andrea Trucco Method of ultrasonic detection and localization of contrast agent microbubbles and method for local drug administration by using microbubble carriers
US9078428B2 (en) 2005-06-28 2015-07-14 Transmedics, Inc. Systems, methods, compositions and solutions for perfusing an organ
US10039276B2 (en) 2005-06-28 2018-08-07 Transmedics, Inc. Systems, methods, compositions and solutions for perfusing an organ
US11844345B2 (en) 2005-06-28 2023-12-19 Transmedics, Inc. Systems, methods, compositions and solutions for perfusing an organ
US9901323B2 (en) 2005-07-22 2018-02-27 Shenzhen Mindray Bio-Medical Electronics Co., Ltd. Aberration correction using channel data in ultrasound imaging system
US8672846B2 (en) 2005-07-22 2014-03-18 Zonare Medical Systems, Inc. Continuous transmit focusing method and apparatus for ultrasound imaging system
US9198636B2 (en) 2005-07-22 2015-12-01 Shenzhen Mindray Bio-Medical Electronics Co., Ltd. Continuous transmit focusing method and apparatus for ultrasound imaging system
US8784318B1 (en) 2005-07-22 2014-07-22 Zonare Medical Systems, Inc. Aberration correction using channel data in ultrasound imaging system
US8002705B1 (en) 2005-07-22 2011-08-23 Zonaire Medical Systems, Inc. Continuous transmit focusing method and apparatus for ultrasound imaging system
US20070081703A1 (en) * 2005-10-12 2007-04-12 Industrial Widget Works Company Methods, devices and systems for multi-modality integrated imaging
US8822203B2 (en) 2006-04-19 2014-09-02 Transmedics, Inc. Systems and methods for ex vivo organ care
US20110136096A1 (en) * 2006-04-19 2011-06-09 Transmedics, Inc. Systems and Methods for Ex Vivo Organ Care
US20080009752A1 (en) * 2006-07-07 2008-01-10 Butler Michael H System for Cardiovascular Data Display and Diagnosis
US20080146922A1 (en) * 2006-10-24 2008-06-19 Zonare Medical Systems, Inc. Control of user interfaces and displays for portable ultrasound unit and docking station
US11917991B2 (en) 2007-03-20 2024-03-05 Transmedics, Inc. Systems for monitoring and applying electrical currents in an organ perfusion system
US9457179B2 (en) 2007-03-20 2016-10-04 Transmedics, Inc. Systems for monitoring and applying electrical currents in an organ perfusion system
US10327443B2 (en) 2007-03-20 2019-06-25 Transmedics, Inc. Systems for monitoring and applying electrical currents in an organ perfusion system
US20080240338A1 (en) * 2007-03-26 2008-10-02 Siemens Aktiengesellschaft Evaluation method for mapping the myocardium of a patient
US8023707B2 (en) * 2007-03-26 2011-09-20 Siemens Aktiengesellschaft Evaluation method for mapping the myocardium of a patient
US8167803B2 (en) 2007-05-16 2012-05-01 Verathon Inc. System and method for bladder detection using harmonic imaging
US8133181B2 (en) 2007-05-16 2012-03-13 Verathon Inc. Device, system and method to measure abdominal aortic aneurysm diameter
US20090156947A1 (en) * 2007-05-22 2009-06-18 Seward James B Knowledgebased image informatics system and method
US11103221B2 (en) 2007-12-20 2021-08-31 Shenzhen Mindray Bio-Medical Electronics Co., Ltd. System and method for providing variable ultrasound array processing in a post-storage mode
US10085724B2 (en) 2007-12-20 2018-10-02 Shenzhen Mindray Bio-Medical Electronics Co., Ltd. System and method for providing variable ultrasound array processing in a post-storage mode
US9060669B1 (en) 2007-12-20 2015-06-23 Zonare Medical Systems, Inc. System and method for providing variable ultrasound array processing in a post-storage mode
US20090197324A1 (en) * 2008-01-31 2009-08-06 Robert Fishman Systems and methods for ex vivo lung care
US9247728B2 (en) 2008-01-31 2016-02-02 Transmedics, Inc. Systems and methods for ex vivo lung care
US10750738B2 (en) 2008-01-31 2020-08-25 Transmedics, Inc. Systems and methods for ex vivo lung care
US9814230B2 (en) 2008-01-31 2017-11-14 Transmedics, Inc. Systems and methods for ex vivo lung care
US9462802B2 (en) 2008-01-31 2016-10-11 Transmedics, Inc. Systems and methods for ex vivo lung care
US20090197325A1 (en) * 2008-01-31 2009-08-06 Transmedics, Inc SYSTEMS AND METHODS FOR Ex vivo LUNG CARE
US9516875B2 (en) 2008-01-31 2016-12-13 Transmedics, Inc. Systems and methods for ex vivo lung care
US20090197240A1 (en) * 2008-01-31 2009-08-06 Transmedics, Inc Systems and methods for ex vivo lung care
US8420380B2 (en) 2008-01-31 2013-04-16 Transmedics, Inc. Systems and methods for ex vivo lung care
US8105237B2 (en) * 2008-05-30 2012-01-31 Volcano Corporation System and method for characterizing tissue based upon homomorphic deconvolution of backscattered ultrasound
US8652045B2 (en) 2008-05-30 2014-02-18 Volcano Corporation System and method for characterizing tissue based upon homomorphic deconvolution of backscattered ultrasound
US20090299186A1 (en) * 2008-05-30 2009-12-03 Volcano Corporation System and method for characterizing tissue based upon homomorphic deconvolution of backscattered ultrasound
US20100160768A1 (en) * 2008-12-24 2010-06-24 Marrouche Nassir F Therapeutic outcome assessment for atrial fibrillation
US20100160765A1 (en) * 2008-12-24 2010-06-24 Marrouche Nassir F Therapeutic success prediction for atrial fibrillation
US10726545B2 (en) 2008-12-24 2020-07-28 University Of Utah Research Foundation Systems and methods for administering treatment of atrial fibrillation
US20100303358A1 (en) * 2009-05-27 2010-12-02 Mausumi Acharyya Method for the automatic analysis of image data of a structure
US8617150B2 (en) 2010-05-14 2013-12-31 Liat Tsoref Reflectance-facilitated ultrasound treatment
US8956346B2 (en) 2010-05-14 2015-02-17 Rainbow Medical, Ltd. Reflectance-facilitated ultrasound treatment and monitoring
US9795450B2 (en) 2010-05-14 2017-10-24 Rainbow Medical Ltd. Reflectance-facilitated ultrasound treatment and monitoring
US9993666B2 (en) 2010-05-14 2018-06-12 Rainbow Medical Ltd. Reflectance-facilitated ultrasound treatment and monitoring
US9242122B2 (en) 2010-05-14 2016-01-26 Liat Tsoref Reflectance-facilitated ultrasound treatment and monitoring
US10321892B2 (en) * 2010-09-27 2019-06-18 Siemens Medical Solutions Usa, Inc. Computerized characterization of cardiac motion in medical diagnostic ultrasound
US20120078097A1 (en) * 2010-09-27 2012-03-29 Siemens Medical Solutions Usa, Inc. Computerized characterization of cardiac motion in medical diagnostic ultrasound
US9036883B2 (en) * 2011-01-10 2015-05-19 The Regents Of The University Of Michigan System and methods for detecting liver disease
US20120177260A1 (en) * 2011-01-10 2012-07-12 The Regents Of The University Of Michigan System and methods for detecting liver disease
US11856944B2 (en) 2011-04-14 2024-01-02 Transmedics, Inc. Organ care solution for ex-vivo machine perfusion of donor lungs
US9713436B2 (en) 2011-10-31 2017-07-25 University Of Utah Research Foundation Patient specific scan parameters for MRI scanning
US10004425B2 (en) 2011-10-31 2018-06-26 University Of Utah Research Foundation Patient specific scan parameters for MRI scanning
US10506945B2 (en) 2011-10-31 2019-12-17 University Of Utah Research Foundation Patient specific scan parameters for MRI scanning
US20140205166A1 (en) * 2012-01-23 2014-07-24 Said Benameur Image restoration system and method
US9058656B2 (en) * 2012-01-23 2015-06-16 Eiffel Medtech Inc. Image restoration system and method
US9707414B2 (en) 2012-02-14 2017-07-18 Rainbow Medical Ltd. Reflectance-facilitated ultrasound treatment and monitoring
US20140341454A1 (en) * 2012-05-18 2014-11-20 Said Benameur Method and system for the three-dimensional reconstruction of structures
US9235931B2 (en) * 2012-05-18 2016-01-12 Eiffel Medtech Inc. Method and system for the three-dimensional reconstruction of structures
US20150196281A1 (en) * 2012-08-07 2015-07-16 Konica Minolta, Inc. Medical data processing device, medical data processing method, and ultrasound diagnostic device
US9770593B2 (en) 2012-11-05 2017-09-26 Pythagoras Medical Ltd. Patient selection using a transluminally-applied electric current
US10004557B2 (en) 2012-11-05 2018-06-26 Pythagoras Medical Ltd. Controlled tissue ablation
US10478249B2 (en) 2014-05-07 2019-11-19 Pythagoras Medical Ltd. Controlled tissue ablation techniques
US11154050B2 (en) 2014-06-02 2021-10-26 Transmedics, Inc. Ex vivo organ care system
US10076112B2 (en) 2014-06-02 2018-09-18 Transmedic, Inc. Ex vivo organ care system
US11944088B2 (en) 2014-06-02 2024-04-02 Transmedics, Inc. Ex vivo organ care system
US11903381B2 (en) 2014-06-02 2024-02-20 Transmedics, Inc. Ex vivo organ care system
US10383685B2 (en) 2015-05-07 2019-08-20 Pythagoras Medical Ltd. Techniques for use with nerve tissue
US20160354061A1 (en) * 2015-06-03 2016-12-08 George Mason University Method And Apparatus For Ultrasonic Analysis Of Brain Activity In Stroke Patients
US10194655B2 (en) 2015-09-09 2019-02-05 Transmedics, Inc. Aortic cannula for ex vivo organ care system
US11122795B2 (en) 2015-09-09 2021-09-21 Transmedics, Inc. Aortic cannula for ex vivo organ care system
US11129591B2 (en) 2016-04-21 2021-09-28 The University Of British Columbia Echocardiographic image analysis
WO2017181288A1 (en) * 2016-04-21 2017-10-26 The University Of British Columbia Echocardiographic image analysis
US11678932B2 (en) 2016-05-18 2023-06-20 Symap Medical (Suzhou) Limited Electrode catheter with incremental advancement
US20190266448A1 (en) * 2016-09-30 2019-08-29 General Electric Company System and method for optimization of deep learning architecture
US11017269B2 (en) * 2016-09-30 2021-05-25 General Electric Company System and method for optimization of deep learning architecture
US11450000B2 (en) 2017-12-13 2022-09-20 Oxford University Innovation Limited Image analysis for scoring motion of a heart wall
JP2021506541A (en) * 2017-12-13 2021-02-22 オックスフォード ユニバーシティー イノベーション リミテッド Diagnostic modeling methods and equipment
CN110313943A (en) * 2018-03-30 2019-10-11 佳能医疗系统株式会社 Medical diagnostic apparatus, medical image-processing apparatus and image processing method
US20210113190A1 (en) * 2018-06-22 2021-04-22 Koninklijke Philips N.V. Ultrasound lesion assessment and associated devices, systems, and methods
US11826201B2 (en) * 2018-06-22 2023-11-28 Koninklijke Philips N.V. Ultrasound lesion assessment and associated devices, systems, and methods
US10751029B2 (en) 2018-08-31 2020-08-25 The University Of British Columbia Ultrasonic image analysis
US11684338B2 (en) * 2020-01-08 2023-06-27 Vitruvia Holdings Inc. Methods and computing system for processing ultrasound image to determine health of subdermal tissue
US20220338834A1 (en) * 2020-01-08 2022-10-27 Vitruvia Holdings Inc. Methods and computing system for processing ultrasound image to determine health of subdermal tissue

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